root@ai-MSC99:~/metoak-demo/osrt_convert_python# python3 convert_onnxrt_gray_input.py -m metoak-mostereonet-aanet-singlergb-2 -c True Remove existing output folder and create a new one ~~~~~~~~~~~~~~~~~ models > 0 ~~~~~~~~~~~~~~~~~ 1 ['metoak-mostereonet-aanet-singlergb-2'] Running_Model: metoak-mostereonet-aanet-singlergb-2 Running shape inference on model /home/root/metoak-demo/models/aanet_model_convshift_singlergb_7384_sim.onnx TIDLCompilationProvider ==========delegate_options========== tidl_tools_path : /home/root/tidl_tools artifacts_folder : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/ platform : J7 version : 7.2 tensor_bits : 16 debug_level : 1 max_num_subgraphs : 16 deny_list : deny_list:layer_type : deny_list:layer_name : model_type : accuracy_level : 1 advanced_options:calibration_frames : 10 advanced_options:calibration_iterations : 10 advanced_options:output_feature_16bit_names_list : advanced_options:params_16bit_names_list : advanced_options:mixed_precision_factor : -1 advanced_options:quantization_scale_type : 4 advanced_options:high_resolution_optimization : 0 advanced_options:pre_batchnorm_fold : 1 ti_internal_nc_flag : 1601 advanced_options:activation_clipping : 1 advanced_options:weight_clipping : 1 advanced_options:bias_calibration : 1 advanced_options:add_data_convert_ops : 3 advanced_options:channel_wise_quantization : 0 advanced_options:inference_mode : 0 advanced_options:num_cores : 1 tidl_tools_path = /home/root/tidl_tools artifacts_folder = /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/ tidl_tensor_bits = 16 debug_level = 1 num_tidl_subgraphs = 16 tidl_denylist = tidl_denylist_layer_name = tidl_denylist_layer_type = tidl_allowlist_layer_name = model_type = tidl_calibration_accuracy_level = 4 tidl_calibration_options:num_frames_calibration = 10 tidl_calibration_options:bias_calibration_iterations = 10 mixed_precision_factor = -1.000000 model_group_id = 0 power_of_2_quantization = 6 ONNX QDQ Enabled = 0 enable_high_resolution_optimization = 0 pre_batchnorm_fold = 1 add_data_convert_ops = 3 output_feature_16bit_names_list = m_params_16bit_names_list = m_single_core_layers_names_list = reserved_compile_constraints_flag = 1601 ti_internal_reserved_1 = ****** WARNING : Network not identified as Object Detection network : (1) Ignore if network is not Object Detection network (2) If network is Object Detection network, please specify "model_type":"OD" as part of OSRT compilation options****** Supported TIDL layer type --- Cast -- /Cast Supported TIDL layer type --- Sub -- /Sub Supported TIDL layer type --- Mul -- /Mul Supported TIDL layer type --- Reshape -- /Reshape Supported TIDL layer type --- Conv -- /Conv_1 Supported TIDL layer type --- Conv -- /model/feature_extractor/down_0/down_0.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_0/down_0.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_1/down_1.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_1/down_1.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_1/down_1.2_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_1/down_1.3_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_2/down_2.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_2/down_2.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_2/down_2.2_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_2/down_2.3_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_3/down_3.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_3/down_3.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_3/down_3.2_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_3/down_3.3_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3_1/Conv_1 Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.2_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.3_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.4_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.5_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.6_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.7_1/LeakyRelu Supported TIDL layer type --- ConvTranspose -- /model/feature_extractor/up_3/up_conv/up_conv.0_1/ConvTranspose Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/up_conv/up_conv.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3_1/Conv Supported TIDL layer type --- Add -- /model/feature_extractor/up_3_1/Add Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/merge_conv/merge_conv.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/merge_conv/merge_conv.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/merge_conv/merge_conv.2_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/merge_conv/merge_conv.3_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/merge_conv/merge_conv.4_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/merge_conv/merge_conv.5_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_36 Supported TIDL layer type --- Conv -- /Conv Supported TIDL layer type --- Conv -- /model/feature_extractor/down_0/down_0.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_0/down_0.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_1/down_1.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_1/down_1.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_1/down_1.2/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_1/down_1.3/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_2/down_2.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_2/down_2.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_2/down_2.2/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_2/down_2.3/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_3/down_3.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_3/down_3.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_3/down_3.2/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_3/down_3.3/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/Conv_1 Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.2/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.3/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.4/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.5/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/down_4/down_4.6/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/down_4/down_4.7/LeakyRelu Supported TIDL layer type --- ConvTranspose -- /model/feature_extractor/up_3/up_conv/up_conv.0/ConvTranspose Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/up_conv/up_conv.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/Conv Supported TIDL layer type --- Add -- /model/feature_extractor/up_3/Add Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/merge_conv/merge_conv.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/merge_conv/merge_conv.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/merge_conv/merge_conv.2/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/merge_conv/merge_conv.3/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_3/merge_conv/merge_conv.4/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_253 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_37 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_47 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_252 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_35 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_46 Supported TIDL layer type --- Add -- /model/cost_volume/Add_11 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_38 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_254 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_39 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_48 Supported TIDL layer type --- Add -- /model/cost_volume/Add_12 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_40 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_255 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_41 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_49 Supported TIDL layer type --- Add -- /model/cost_volume/Add_13 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_42 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_256 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_43 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_50 Supported TIDL layer type --- Add -- /model/cost_volume/Add_14 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_44 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_257 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_45 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_51 Supported TIDL layer type --- Add -- /model/cost_volume/Add_15 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.1.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2_1/Conv_1 Supported TIDL layer type --- ConvTranspose -- /model/feature_extractor/up_2/up_conv/up_conv.0_1/ConvTranspose Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/up_conv/up_conv.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2_1/Conv Supported TIDL layer type --- Add -- /model/feature_extractor/up_2_1/Add Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/merge_conv/merge_conv.0_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/merge_conv/merge_conv.1_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/merge_conv/merge_conv.2_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/merge_conv/merge_conv.3_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/merge_conv/merge_conv.4_1/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/merge_conv/merge_conv.5_1/LeakyRelu Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_1 Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/Conv_1 Supported TIDL layer type --- ConvTranspose -- /model/feature_extractor/up_2/up_conv/up_conv.0/ConvTranspose Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/up_conv/up_conv.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/Conv Supported TIDL layer type --- Add -- /model/feature_extractor/up_2/Add Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/merge_conv/merge_conv.0/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/merge_conv/merge_conv.1/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/merge_conv/merge_conv.2/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/merge_conv/merge_conv.3/LeakyRelu Supported TIDL layer type --- Conv -- /model/feature_extractor/up_2/merge_conv/merge_conv.4/Conv Supported TIDL layer type --- LeakyRelu -- /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_121 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_2 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_24 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_120 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_23 Supported TIDL layer type --- Add -- /model/cost_volume/Add Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_3 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_122 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_4 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_25 Supported TIDL layer type --- Add -- /model/cost_volume/Add_1 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_5 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_123 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_6 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_26 Supported TIDL layer type --- Add -- /model/cost_volume/Add_2 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_7 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_124 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_8 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_27 Supported TIDL layer type --- Add -- /model/cost_volume/Add_3 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_9 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_125 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_10 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_28 Supported TIDL layer type --- Add -- /model/cost_volume/Add_4 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_11 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_126 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_12 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_29 Supported TIDL layer type --- Add -- /model/cost_volume/Add_5 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_13 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_127 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_14 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_30 Supported TIDL layer type --- Add -- /model/cost_volume/Add_6 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_15 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_128 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_16 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_31 Supported TIDL layer type --- Add -- /model/cost_volume/Add_7 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_17 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_129 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_18 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_32 Supported TIDL layer type --- Add -- /model/cost_volume/Add_8 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_19 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_130 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_20 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_33 Supported TIDL layer type --- Add -- /model/cost_volume/Add_9 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_21 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_131 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_22 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_34 Supported TIDL layer type --- Add -- /model/cost_volume/Add_10 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/Add_4 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_53 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_419 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_54 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_58 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_418 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_52 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_57 Supported TIDL layer type --- Add -- /model/cost_volume/Add_16 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_55 Supported TIDL layer type --- Mul -- /model/cost_volume/Mul_420 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_56 Supported TIDL layer type --- Conv -- /model/cost_volume/Conv_59 Supported TIDL layer type --- Add -- /model/cost_volume/Add_17 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/branches.2.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.2.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.1/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.0/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.0/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.0/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.0/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.0/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/branches.1.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.1.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.1/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.1/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/Add_4 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/Add_4 Supported TIDL layer type --- Add -- /model/aggregation/fusions.1/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.1/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/branches.2.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.2.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.3/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.2/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.2/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.2/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.2/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.2/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.2/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/branches.1.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.1.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.3/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.3/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/Add_4 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/Add_4 Supported TIDL layer type --- Add -- /model/aggregation/fusions.3/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.3/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/branches.2.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.2.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.5/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.4/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.4/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.4/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.4/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.4/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.4/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/branches.1.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.1.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.5/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.5/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/Add_4 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/Add_4 Supported TIDL layer type --- Add -- /model/aggregation/fusions.5/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.5/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/branches.2.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.2.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.7/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.6/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.6/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.6/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.6/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.6/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.6/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/branches.1.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.1.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.7/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.7/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.0.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/Add_4 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/Add_4 Supported TIDL layer type --- Add -- /model/aggregation/fusions.7/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.7/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/branches.2.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/Add_5 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.2.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.2.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.2.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.2.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.2.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.9/branches.2.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.2.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.9/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.1.2/fuse_layers.1.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.8/Resize_2 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/Add_2 Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/Add_3 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.1.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.1.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.1.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.1.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.1.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.9/branches.1.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.1.0/relu_2/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.9/Resize Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.0.2/fuse_layers.0.2.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.8/Resize_1 Supported TIDL layer type --- Conv -- /model/aggregation/fusions.8/fuse_layers.0.1/fuse_layers.0.1.0/Conv Supported TIDL layer type --- Resize -- /model/aggregation/fusions.8/Resize Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.8/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.8/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.0.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.0.0/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.0.0/conv2/Conv Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.0.0/relu_1/Relu Supported TIDL layer type --- Conv -- /model/aggregation/fusions.9/branches.0.0/conv3/Conv Supported TIDL layer type --- Add -- /model/aggregation/fusions.9/branches.0.0/Add Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/branches.0.0/relu_2/Relu Supported TIDL layer type --- Add -- /model/aggregation/fusions.9/Add Supported TIDL layer type --- Add -- /model/aggregation/fusions.9/Add_1 Supported TIDL layer type --- Relu -- /model/aggregation/fusions.9/relu/Relu Supported TIDL layer type --- Conv -- /model/aggregation/final_conv.0/Conv Supported TIDL layer type --- Conv -- /model/disparity_estimations.0/Conv Supported TIDL layer type --- Resize -- /model/refinement.0/Resize Supported TIDL layer type --- Conv -- /model/refinement.0/Conv_1 Supported TIDL layer type --- Conv -- /model/refinement.0/Conv Supported TIDL layer type --- Concat -- /model/refinement.0/Concat Supported TIDL layer type --- Conv -- /model/refinement.0/conv/Conv Supported TIDL layer type --- Conv -- /model/refinement.0/dilated_blocks/dilated_blocks.0/conv1/Conv Supported TIDL layer type --- Relu -- /model/refinement.0/dilated_blocks/dilated_blocks.0/Relu Supported TIDL layer type --- Conv -- /model/refinement.0/dilated_blocks/dilated_blocks.0/conv2/Conv Supported TIDL layer type --- Add -- /model/refinement.0/dilated_blocks/dilated_blocks.0/Add Supported TIDL layer type --- Conv -- /model/refinement.0/final_conv/Conv Supported TIDL layer type --- Add -- /model/refinement.0/Add Supported TIDL layer type --- Relu -- /model/refinement.0/Relu Preliminary subgraphs created = 1 Final number of subgraphs created are : 1, - Offloaded Nodes - 604, Total Nodes - 604 SUGGESTION -- [TIDL_Deconv2DLayer] Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION -- [TIDL_Deconv2DLayer] Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION -- [TIDL_Deconv2DLayer] Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION -- [TIDL_Deconv2DLayer] Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION -- [TIDL_ResizeLayer] Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. Running runtimes graphviz - /home/root/tidl_tools/tidl_graphVisualiser_runtimes.out /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2//allowedNode.txt /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2//tempDir/graphvizInfo.txt /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2//tempDir/runtimes_visualization.svg *** In TIDL_createStateImportFunc *** Compute on node : TIDLExecutionProvider_TIDL_0_0 0, Cast, 1, 1, image1, /Cast_output_0 1, Sub, 2, 1, /Cast_output_0, /Sub_output_0 2, Mul, 2, 1, /Sub_output_0, /Mul_output_0 3, Reshape, 2, 1, /Mul_output_0, /Reshape_output_0 4, Conv, 2, 1, /Reshape_output_0, /Conv_output_0 5, Conv, 3, 1, /Conv_output_0, /model/refinement.0/Conv_output_0 6, Conv, 2, 1, /Reshape_output_0, /Conv_1_output_0 7, Conv, 3, 1, /Conv_1_output_0, /model/feature_extractor/down_0/down_0.0_1/Conv_output_0 8, LeakyRelu, 1, 1, /model/feature_extractor/down_0/down_0.0_1/Conv_output_0, /model/feature_extractor/down_0/down_0.1_1/LeakyRelu_output_0 9, Conv, 3, 1, /model/feature_extractor/down_0/down_0.1_1/LeakyRelu_output_0, /model/feature_extractor/down_1/down_1.0_1/Conv_output_0 10, LeakyRelu, 1, 1, /model/feature_extractor/down_1/down_1.0_1/Conv_output_0, /model/feature_extractor/down_1/down_1.1_1/LeakyRelu_output_0 11, Conv, 3, 1, /model/feature_extractor/down_1/down_1.1_1/LeakyRelu_output_0, /model/feature_extractor/down_1/down_1.2_1/Conv_output_0 12, LeakyRelu, 1, 1, /model/feature_extractor/down_1/down_1.2_1/Conv_output_0, /model/feature_extractor/down_1/down_1.3_1/LeakyRelu_output_0 13, Conv, 3, 1, /model/feature_extractor/down_1/down_1.3_1/LeakyRelu_output_0, /model/feature_extractor/down_2/down_2.0_1/Conv_output_0 14, LeakyRelu, 1, 1, /model/feature_extractor/down_2/down_2.0_1/Conv_output_0, /model/feature_extractor/down_2/down_2.1_1/LeakyRelu_output_0 15, Conv, 3, 1, /model/feature_extractor/down_2/down_2.1_1/LeakyRelu_output_0, /model/feature_extractor/down_2/down_2.2_1/Conv_output_0 16, LeakyRelu, 1, 1, /model/feature_extractor/down_2/down_2.2_1/Conv_output_0, /model/feature_extractor/down_2/down_2.3_1/LeakyRelu_output_0 17, Conv, 3, 1, /model/feature_extractor/down_2/down_2.3_1/LeakyRelu_output_0, /model/feature_extractor/down_3/down_3.0_1/Conv_output_0 18, LeakyRelu, 1, 1, /model/feature_extractor/down_3/down_3.0_1/Conv_output_0, /model/feature_extractor/down_3/down_3.1_1/LeakyRelu_output_0 19, Conv, 3, 1, /model/feature_extractor/down_3/down_3.1_1/LeakyRelu_output_0, /model/feature_extractor/down_3/down_3.2_1/Conv_output_0 20, LeakyRelu, 1, 1, /model/feature_extractor/down_3/down_3.2_1/Conv_output_0, /model/feature_extractor/down_3/down_3.3_1/LeakyRelu_output_0 21, Conv, 3, 1, /model/feature_extractor/down_3/down_3.3_1/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.0_1/Conv_output_0 22, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.0_1/Conv_output_0, /model/feature_extractor/down_4/down_4.1_1/LeakyRelu_output_0 23, Conv, 3, 1, /model/feature_extractor/down_4/down_4.1_1/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.2_1/Conv_output_0 24, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.2_1/Conv_output_0, /model/feature_extractor/down_4/down_4.3_1/LeakyRelu_output_0 25, Conv, 3, 1, /model/feature_extractor/down_4/down_4.3_1/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.4_1/Conv_output_0 26, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.4_1/Conv_output_0, /model/feature_extractor/down_4/down_4.5_1/LeakyRelu_output_0 27, Conv, 3, 1, /model/feature_extractor/down_4/down_4.5_1/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.6_1/Conv_output_0 28, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.6_1/Conv_output_0, /model/feature_extractor/down_4/down_4.7_1/LeakyRelu_output_0 29, ConvTranspose, 3, 1, /model/feature_extractor/down_4/down_4.7_1/LeakyRelu_output_0, /model/feature_extractor/up_3/up_conv/up_conv.0_1/ConvTranspose_output_0 30, LeakyRelu, 1, 1, /model/feature_extractor/up_3/up_conv/up_conv.0_1/ConvTranspose_output_0, /model/feature_extractor/up_3/up_conv/up_conv.1_1/LeakyRelu_output_0 31, Conv, 2, 1, /model/feature_extractor/up_3/up_conv/up_conv.1_1/LeakyRelu_output_0, /model/feature_extractor/up_3_1/Conv_output_0 32, Conv, 2, 1, /model/feature_extractor/down_3/down_3.3_1/LeakyRelu_output_0, /model/feature_extractor/up_3_1/Conv_1_output_0 33, Add, 2, 1, /model/feature_extractor/up_3_1/Conv_output_0, /model/feature_extractor/up_3_1/Add_output_0 34, Conv, 3, 1, /model/feature_extractor/up_3_1/Add_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.0_1/Conv_output_0 35, LeakyRelu, 1, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.0_1/Conv_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.1_1/LeakyRelu_output_0 36, Conv, 3, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.1_1/LeakyRelu_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.2_1/Conv_output_0 37, LeakyRelu, 1, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.2_1/Conv_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.3_1/LeakyRelu_output_0 38, Conv, 3, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.3_1/LeakyRelu_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.4_1/Conv_output_0 39, LeakyRelu, 1, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.4_1/Conv_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.5_1/LeakyRelu_output_0 40, ConvTranspose, 3, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5_1/LeakyRelu_output_0, /model/feature_extractor/up_2/up_conv/up_conv.0_1/ConvTranspose_output_0 41, LeakyRelu, 1, 1, /model/feature_extractor/up_2/up_conv/up_conv.0_1/ConvTranspose_output_0, /model/feature_extractor/up_2/up_conv/up_conv.1_1/LeakyRelu_output_0 42, Conv, 2, 1, /model/feature_extractor/up_2/up_conv/up_conv.1_1/LeakyRelu_output_0, /model/feature_extractor/up_2_1/Conv_output_0 43, Conv, 2, 1, /model/feature_extractor/down_2/down_2.3_1/LeakyRelu_output_0, /model/feature_extractor/up_2_1/Conv_1_output_0 44, Add, 2, 1, /model/feature_extractor/up_2_1/Conv_output_0, /model/feature_extractor/up_2_1/Add_output_0 45, Conv, 3, 1, /model/feature_extractor/up_2_1/Add_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.0_1/Conv_output_0 46, LeakyRelu, 1, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.0_1/Conv_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.1_1/LeakyRelu_output_0 47, Conv, 3, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.1_1/LeakyRelu_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.2_1/Conv_output_0 48, LeakyRelu, 1, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.2_1/Conv_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.3_1/LeakyRelu_output_0 49, Conv, 3, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.3_1/LeakyRelu_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.4_1/Conv_output_0 50, LeakyRelu, 1, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.4_1/Conv_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.5_1/LeakyRelu_output_0 51, Conv, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5_1/LeakyRelu_output_0, /model/cost_volume/Conv_1_output_0 52, Conv, 2, 1, /model/cost_volume/Conv_1_output_0, /model/cost_volume/Conv_3_output_0 53, Conv, 2, 1, /model/cost_volume/Conv_3_output_0, /model/cost_volume/Conv_5_output_0 54, Conv, 2, 1, /model/cost_volume/Conv_5_output_0, /model/cost_volume/Conv_7_output_0 55, Conv, 2, 1, /model/cost_volume/Conv_7_output_0, /model/cost_volume/Conv_9_output_0 56, Conv, 2, 1, /model/cost_volume/Conv_9_output_0, /model/cost_volume/Conv_11_output_0 57, Conv, 2, 1, /model/cost_volume/Conv_11_output_0, /model/cost_volume/Conv_13_output_0 58, Conv, 2, 1, /model/cost_volume/Conv_13_output_0, /model/cost_volume/Conv_15_output_0 59, Conv, 2, 1, /model/cost_volume/Conv_15_output_0, /model/cost_volume/Conv_17_output_0 60, Conv, 2, 1, /model/cost_volume/Conv_17_output_0, /model/cost_volume/Conv_19_output_0 61, Conv, 2, 1, /model/cost_volume/Conv_19_output_0, /model/cost_volume/Conv_21_output_0 62, Conv, 3, 1, /Conv_output_0, /model/feature_extractor/down_0/down_0.0/Conv_output_0 63, LeakyRelu, 1, 1, /model/feature_extractor/down_0/down_0.0/Conv_output_0, /model/feature_extractor/down_0/down_0.1/LeakyRelu_output_0 64, Conv, 3, 1, /model/feature_extractor/down_0/down_0.1/LeakyRelu_output_0, /model/feature_extractor/down_1/down_1.0/Conv_output_0 65, LeakyRelu, 1, 1, /model/feature_extractor/down_1/down_1.0/Conv_output_0, /model/feature_extractor/down_1/down_1.1/LeakyRelu_output_0 66, Conv, 3, 1, /model/feature_extractor/down_1/down_1.1/LeakyRelu_output_0, /model/feature_extractor/down_1/down_1.2/Conv_output_0 67, LeakyRelu, 1, 1, /model/feature_extractor/down_1/down_1.2/Conv_output_0, /model/feature_extractor/down_1/down_1.3/LeakyRelu_output_0 68, Conv, 3, 1, /model/feature_extractor/down_1/down_1.3/LeakyRelu_output_0, /model/feature_extractor/down_2/down_2.0/Conv_output_0 69, LeakyRelu, 1, 1, /model/feature_extractor/down_2/down_2.0/Conv_output_0, /model/feature_extractor/down_2/down_2.1/LeakyRelu_output_0 70, Conv, 3, 1, /model/feature_extractor/down_2/down_2.1/LeakyRelu_output_0, /model/feature_extractor/down_2/down_2.2/Conv_output_0 71, LeakyRelu, 1, 1, /model/feature_extractor/down_2/down_2.2/Conv_output_0, /model/feature_extractor/down_2/down_2.3/LeakyRelu_output_0 72, Conv, 3, 1, /model/feature_extractor/down_2/down_2.3/LeakyRelu_output_0, /model/feature_extractor/down_3/down_3.0/Conv_output_0 73, LeakyRelu, 1, 1, /model/feature_extractor/down_3/down_3.0/Conv_output_0, /model/feature_extractor/down_3/down_3.1/LeakyRelu_output_0 74, Conv, 3, 1, /model/feature_extractor/down_3/down_3.1/LeakyRelu_output_0, /model/feature_extractor/down_3/down_3.2/Conv_output_0 75, LeakyRelu, 1, 1, /model/feature_extractor/down_3/down_3.2/Conv_output_0, /model/feature_extractor/down_3/down_3.3/LeakyRelu_output_0 76, Conv, 3, 1, /model/feature_extractor/down_3/down_3.3/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.0/Conv_output_0 77, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.0/Conv_output_0, /model/feature_extractor/down_4/down_4.1/LeakyRelu_output_0 78, Conv, 3, 1, /model/feature_extractor/down_4/down_4.1/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.2/Conv_output_0 79, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.2/Conv_output_0, /model/feature_extractor/down_4/down_4.3/LeakyRelu_output_0 80, Conv, 3, 1, /model/feature_extractor/down_4/down_4.3/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.4/Conv_output_0 81, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.4/Conv_output_0, /model/feature_extractor/down_4/down_4.5/LeakyRelu_output_0 82, Conv, 3, 1, /model/feature_extractor/down_4/down_4.5/LeakyRelu_output_0, /model/feature_extractor/down_4/down_4.6/Conv_output_0 83, LeakyRelu, 1, 1, /model/feature_extractor/down_4/down_4.6/Conv_output_0, /model/feature_extractor/down_4/down_4.7/LeakyRelu_output_0 84, ConvTranspose, 3, 1, /model/feature_extractor/down_4/down_4.7/LeakyRelu_output_0, /model/feature_extractor/up_3/up_conv/up_conv.0/ConvTranspose_output_0 85, LeakyRelu, 1, 1, /model/feature_extractor/up_3/up_conv/up_conv.0/ConvTranspose_output_0, /model/feature_extractor/up_3/up_conv/up_conv.1/LeakyRelu_output_0 86, Conv, 2, 1, /model/feature_extractor/up_3/up_conv/up_conv.1/LeakyRelu_output_0, /model/feature_extractor/up_3/Conv_output_0 87, Conv, 2, 1, /model/feature_extractor/down_3/down_3.3/LeakyRelu_output_0, /model/feature_extractor/up_3/Conv_1_output_0 88, Add, 2, 1, /model/feature_extractor/up_3/Conv_output_0, /model/feature_extractor/up_3/Add_output_0 89, Conv, 3, 1, /model/feature_extractor/up_3/Add_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.0/Conv_output_0 90, LeakyRelu, 1, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.0/Conv_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.1/LeakyRelu_output_0 91, Conv, 3, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.1/LeakyRelu_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.2/Conv_output_0 92, LeakyRelu, 1, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.2/Conv_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.3/LeakyRelu_output_0 93, Conv, 3, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.3/LeakyRelu_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.4/Conv_output_0 94, LeakyRelu, 1, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.4/Conv_output_0, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0 95, ConvTranspose, 3, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/feature_extractor/up_2/up_conv/up_conv.0/ConvTranspose_output_0 96, LeakyRelu, 1, 1, /model/feature_extractor/up_2/up_conv/up_conv.0/ConvTranspose_output_0, /model/feature_extractor/up_2/up_conv/up_conv.1/LeakyRelu_output_0 97, Conv, 2, 1, /model/feature_extractor/up_2/up_conv/up_conv.1/LeakyRelu_output_0, /model/feature_extractor/up_2/Conv_output_0 98, Conv, 2, 1, /model/feature_extractor/down_2/down_2.3/LeakyRelu_output_0, /model/feature_extractor/up_2/Conv_1_output_0 99, Add, 2, 1, /model/feature_extractor/up_2/Conv_output_0, /model/feature_extractor/up_2/Add_output_0 100, Conv, 3, 1, /model/feature_extractor/up_2/Add_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.0/Conv_output_0 101, LeakyRelu, 1, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.0/Conv_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.1/LeakyRelu_output_0 102, Conv, 3, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.1/LeakyRelu_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.2/Conv_output_0 103, LeakyRelu, 1, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.2/Conv_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.3/LeakyRelu_output_0 104, Conv, 3, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.3/LeakyRelu_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.4/Conv_output_0 105, LeakyRelu, 1, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.4/Conv_output_0, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0 106, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_131_output_0 107, Conv, 2, 1, /model/cost_volume/Mul_131_output_0, /model/cost_volume/Conv_22_output_0 108, Conv, 2, 1, /model/cost_volume/Conv_22_output_0, /model/cost_volume/Conv_34_output_0 109, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_130_output_0 110, Conv, 2, 1, /model/cost_volume/Mul_130_output_0, /model/cost_volume/Conv_20_output_0 111, Conv, 2, 1, /model/cost_volume/Conv_20_output_0, /model/cost_volume/Conv_33_output_0 112, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_129_output_0 113, Conv, 2, 1, /model/cost_volume/Mul_129_output_0, /model/cost_volume/Conv_18_output_0 114, Conv, 2, 1, /model/cost_volume/Conv_18_output_0, /model/cost_volume/Conv_32_output_0 115, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_128_output_0 116, Conv, 2, 1, /model/cost_volume/Mul_128_output_0, /model/cost_volume/Conv_16_output_0 117, Conv, 2, 1, /model/cost_volume/Conv_16_output_0, /model/cost_volume/Conv_31_output_0 118, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_127_output_0 119, Conv, 2, 1, /model/cost_volume/Mul_127_output_0, /model/cost_volume/Conv_14_output_0 120, 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130, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_123_output_0 131, Conv, 2, 1, /model/cost_volume/Mul_123_output_0, /model/cost_volume/Conv_6_output_0 132, Conv, 2, 1, /model/cost_volume/Conv_6_output_0, /model/cost_volume/Conv_26_output_0 133, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_122_output_0 134, Conv, 2, 1, /model/cost_volume/Mul_122_output_0, /model/cost_volume/Conv_4_output_0 135, Conv, 2, 1, /model/cost_volume/Conv_4_output_0, /model/cost_volume/Conv_25_output_0 136, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_120_output_0 137, Conv, 2, 1, /model/cost_volume/Mul_120_output_0, /model/cost_volume/Conv_output_0 138, Conv, 2, 1, /model/cost_volume/Conv_output_0, /model/cost_volume/Conv_23_output_0 139, Mul, 2, 1, /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_121_output_0 140, Conv, 2, 1, /model/cost_volume/Mul_121_output_0, /model/cost_volume/Conv_2_output_0 141, Conv, 2, 1, /model/cost_volume/Conv_2_output_0, /model/cost_volume/Conv_24_output_0 142, Add, 2, 1, /model/cost_volume/Conv_23_output_0, /model/cost_volume/Add_output_0 143, Add, 2, 1, /model/cost_volume/Add_output_0, /model/cost_volume/Add_1_output_0 144, Add, 2, 1, /model/cost_volume/Add_1_output_0, /model/cost_volume/Add_2_output_0 145, Add, 2, 1, /model/cost_volume/Add_2_output_0, /model/cost_volume/Add_3_output_0 146, Add, 2, 1, /model/cost_volume/Add_3_output_0, /model/cost_volume/Add_4_output_0 147, Add, 2, 1, /model/cost_volume/Add_4_output_0, /model/cost_volume/Add_5_output_0 148, Add, 2, 1, /model/cost_volume/Add_5_output_0, /model/cost_volume/Add_6_output_0 149, Add, 2, 1, /model/cost_volume/Add_6_output_0, /model/cost_volume/Add_7_output_0 150, Add, 2, 1, /model/cost_volume/Add_7_output_0, /model/cost_volume/Add_8_output_0 151, Add, 2, 1, /model/cost_volume/Add_8_output_0, /model/cost_volume/Add_9_output_0 152, Add, 2, 1, /model/cost_volume/Add_9_output_0, /model/cost_volume/Add_10_output_0 153, Conv, 3, 1, /model/cost_volume/Add_10_output_0, /model/aggregation/fusions.0/branches.0.0/conv1/Conv_output_0 154, Relu, 1, 1, /model/aggregation/fusions.0/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.0/branches.0.0/relu/Relu_output_0 155, Conv, 3, 1, /model/aggregation/fusions.0/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.0/branches.0.0/conv2/Conv_output_0 156, Relu, 1, 1, /model/aggregation/fusions.0/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.0/branches.0.0/relu_1/Relu_output_0 157, Conv, 3, 1, /model/aggregation/fusions.0/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.0/branches.0.0/conv3/Conv_output_0 158, Add, 2, 1, /model/aggregation/fusions.0/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.0/branches.0.0/Add_output_0 159, Relu, 1, 1, /model/aggregation/fusions.0/branches.0.0/Add_output_0, /model/aggregation/fusions.0/branches.0.0/relu_2/Relu_output_0 160, Conv, 3, 1, /model/aggregation/fusions.0/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 161, Conv, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5_1/LeakyRelu_output_0, /model/cost_volume/Conv_36_output_0 162, Conv, 2, 1, /model/cost_volume/Conv_36_output_0, /model/cost_volume/Conv_38_output_0 163, Conv, 2, 1, /model/cost_volume/Conv_38_output_0, /model/cost_volume/Conv_40_output_0 164, Conv, 2, 1, /model/cost_volume/Conv_40_output_0, /model/cost_volume/Conv_42_output_0 165, Conv, 2, 1, /model/cost_volume/Conv_42_output_0, /model/cost_volume/Conv_44_output_0 166, Mul, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_257_output_0 167, Conv, 2, 1, /model/cost_volume/Mul_257_output_0, /model/cost_volume/Conv_45_output_0 168, Conv, 2, 1, /model/cost_volume/Conv_45_output_0, /model/cost_volume/Conv_51_output_0 169, Mul, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_256_output_0 170, Conv, 2, 1, /model/cost_volume/Mul_256_output_0, /model/cost_volume/Conv_43_output_0 171, Conv, 2, 1, /model/cost_volume/Conv_43_output_0, /model/cost_volume/Conv_50_output_0 172, Mul, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_255_output_0 173, Conv, 2, 1, /model/cost_volume/Mul_255_output_0, /model/cost_volume/Conv_41_output_0 174, Conv, 2, 1, /model/cost_volume/Conv_41_output_0, /model/cost_volume/Conv_49_output_0 175, Mul, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_254_output_0 176, Conv, 2, 1, /model/cost_volume/Mul_254_output_0, /model/cost_volume/Conv_39_output_0 177, Conv, 2, 1, /model/cost_volume/Conv_39_output_0, /model/cost_volume/Conv_48_output_0 178, Mul, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_252_output_0 179, Conv, 2, 1, /model/cost_volume/Mul_252_output_0, /model/cost_volume/Conv_35_output_0 180, Conv, 2, 1, /model/cost_volume/Conv_35_output_0, /model/cost_volume/Conv_46_output_0 181, Mul, 2, 1, /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu_output_0, /model/cost_volume/Mul_253_output_0 182, Conv, 2, 1, /model/cost_volume/Mul_253_output_0, /model/cost_volume/Conv_37_output_0 183, Conv, 2, 1, /model/cost_volume/Conv_37_output_0, /model/cost_volume/Conv_47_output_0 184, Add, 2, 1, /model/cost_volume/Conv_46_output_0, /model/cost_volume/Add_11_output_0 185, Add, 2, 1, /model/cost_volume/Add_11_output_0, /model/cost_volume/Add_12_output_0 186, Add, 2, 1, /model/cost_volume/Add_12_output_0, /model/cost_volume/Add_13_output_0 187, Add, 2, 1, /model/cost_volume/Add_13_output_0, /model/cost_volume/Add_14_output_0 188, Add, 2, 1, /model/cost_volume/Add_14_output_0, /model/cost_volume/Add_15_output_0 189, Conv, 3, 1, /model/cost_volume/Add_15_output_0, /model/aggregation/fusions.0/branches.1.0/conv1/Conv_output_0 190, Relu, 1, 1, /model/aggregation/fusions.0/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.0/branches.1.0/relu/Relu_output_0 191, Conv, 3, 1, /model/aggregation/fusions.0/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.0/branches.1.0/conv2/Conv_output_0 192, Relu, 1, 1, /model/aggregation/fusions.0/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.0/branches.1.0/relu_1/Relu_output_0 193, Conv, 3, 1, /model/aggregation/fusions.0/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.0/branches.1.0/conv3/Conv_output_0 194, Add, 2, 1, /model/aggregation/fusions.0/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.0/branches.1.0/Add_output_0 195, Relu, 1, 1, /model/aggregation/fusions.0/branches.1.0/Add_output_0, /model/aggregation/fusions.0/branches.1.0/relu_2/Relu_output_0 196, Add, 2, 1, /model/aggregation/fusions.0/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.0/Add_2_output_0 197, Conv, 2, 1, /model/feature_extractor/down_4/down_4.7_1/LeakyRelu_output_0, /model/cost_volume/Conv_53_output_0 198, Conv, 2, 1, /model/cost_volume/Conv_53_output_0, /model/cost_volume/Conv_55_output_0 199, Mul, 2, 1, /model/feature_extractor/down_4/down_4.7/LeakyRelu_output_0, /model/cost_volume/Mul_420_output_0 200, Conv, 2, 1, /model/cost_volume/Mul_420_output_0, /model/cost_volume/Conv_56_output_0 201, Conv, 2, 1, /model/cost_volume/Conv_56_output_0, /model/cost_volume/Conv_59_output_0 202, Mul, 2, 1, /model/feature_extractor/down_4/down_4.7/LeakyRelu_output_0, /model/cost_volume/Mul_418_output_0 203, Conv, 2, 1, /model/cost_volume/Mul_418_output_0, /model/cost_volume/Conv_52_output_0 204, Conv, 2, 1, /model/cost_volume/Conv_52_output_0, /model/cost_volume/Conv_57_output_0 205, Mul, 2, 1, /model/feature_extractor/down_4/down_4.7/LeakyRelu_output_0, /model/cost_volume/Mul_419_output_0 206, Conv, 2, 1, /model/cost_volume/Mul_419_output_0, /model/cost_volume/Conv_54_output_0 207, Conv, 2, 1, /model/cost_volume/Conv_54_output_0, /model/cost_volume/Conv_58_output_0 208, Add, 2, 1, /model/cost_volume/Conv_57_output_0, /model/cost_volume/Add_16_output_0 209, Add, 2, 1, /model/cost_volume/Add_16_output_0, /model/cost_volume/Add_17_output_0 210, Conv, 3, 1, /model/cost_volume/Add_17_output_0, /model/aggregation/fusions.0/branches.2.0/conv1/Conv_output_0 211, Relu, 1, 1, /model/aggregation/fusions.0/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.0/branches.2.0/relu/Relu_output_0 212, Conv, 3, 1, /model/aggregation/fusions.0/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.0/branches.2.0/conv2/Conv_output_0 213, Relu, 1, 1, /model/aggregation/fusions.0/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.0/branches.2.0/relu_1/Relu_output_0 214, Conv, 3, 1, /model/aggregation/fusions.0/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.0/branches.2.0/conv3/Conv_output_0 215, Add, 2, 1, /model/aggregation/fusions.0/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.0/branches.2.0/Add_output_0 216, Relu, 1, 1, /model/aggregation/fusions.0/branches.2.0/Add_output_0, /model/aggregation/fusions.0/branches.2.0/relu_2/Relu_output_0 217, Conv, 3, 1, /model/aggregation/fusions.0/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 218, Resize, 3, 1, /model/aggregation/fusions.0/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.0/Resize_2_output_0 219, Add, 2, 1, /model/aggregation/fusions.0/Add_2_output_0, /model/aggregation/fusions.0/Add_3_output_0 220, Relu, 1, 1, /model/aggregation/fusions.0/Add_3_output_0, /model/aggregation/fusions.0/relu_1/Relu_output_0 221, Conv, 3, 1, /model/aggregation/fusions.0/relu_1/Relu_output_0, /model/aggregation/fusions.1/branches.1.0/conv1/Conv_output_0 222, Relu, 1, 1, /model/aggregation/fusions.1/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.1/branches.1.0/relu/Relu_output_0 223, Conv, 3, 1, /model/aggregation/fusions.1/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.1/branches.1.0/conv2/Conv_output_0 224, Relu, 1, 1, /model/aggregation/fusions.1/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.1/branches.1.0/relu_1/Relu_output_0 225, Conv, 3, 1, /model/aggregation/fusions.1/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.1/branches.1.0/conv3/Conv_output_0 226, Add, 2, 1, /model/aggregation/fusions.1/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.1/branches.1.0/Add_output_0 227, Relu, 1, 1, /model/aggregation/fusions.1/branches.1.0/Add_output_0, /model/aggregation/fusions.1/branches.1.0/relu_2/Relu_output_0 228, Conv, 3, 1, /model/aggregation/fusions.1/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 229, Resize, 3, 1, /model/aggregation/fusions.1/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.1/Resize_output_0 230, Conv, 3, 1, /model/aggregation/fusions.0/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 231, Resize, 3, 1, /model/aggregation/fusions.0/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.0/Resize_output_0 232, Add, 2, 1, /model/aggregation/fusions.0/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/Add_output_0 233, Conv, 3, 1, /model/aggregation/fusions.0/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 234, Resize, 3, 1, /model/aggregation/fusions.0/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.0/Resize_1_output_0 235, Add, 2, 1, /model/aggregation/fusions.0/Add_output_0, /model/aggregation/fusions.0/Add_1_output_0 236, Relu, 1, 1, /model/aggregation/fusions.0/Add_1_output_0, /model/aggregation/fusions.0/relu/Relu_output_0 237, Conv, 3, 1, /model/aggregation/fusions.0/relu/Relu_output_0, /model/aggregation/fusions.1/branches.0.0/conv1/Conv_output_0 238, Relu, 1, 1, /model/aggregation/fusions.1/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.1/branches.0.0/relu/Relu_output_0 239, Conv, 3, 1, /model/aggregation/fusions.1/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.1/branches.0.0/conv2/Conv_output_0 240, Relu, 1, 1, /model/aggregation/fusions.1/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.1/branches.0.0/relu_1/Relu_output_0 241, Conv, 3, 1, /model/aggregation/fusions.1/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.1/branches.0.0/conv3/Conv_output_0 242, Add, 2, 1, /model/aggregation/fusions.1/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.1/branches.0.0/Add_output_0 243, Relu, 1, 1, /model/aggregation/fusions.1/branches.0.0/Add_output_0, /model/aggregation/fusions.1/branches.0.0/relu_2/Relu_output_0 244, Add, 2, 1, /model/aggregation/fusions.1/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/Add_output_0 245, Conv, 3, 1, /model/aggregation/fusions.0/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 246, Relu, 1, 1, /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 247, Conv, 3, 1, /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 248, Conv, 3, 1, /model/aggregation/fusions.0/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.0/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 249, Add, 2, 1, /model/aggregation/fusions.0/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.0/Add_4_output_0 250, Add, 2, 1, /model/aggregation/fusions.0/Add_4_output_0, /model/aggregation/fusions.0/Add_5_output_0 251, Relu, 1, 1, /model/aggregation/fusions.0/Add_5_output_0, /model/aggregation/fusions.0/relu_2/Relu_output_0 252, Conv, 3, 1, /model/aggregation/fusions.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/branches.2.0/conv1/Conv_output_0 253, Relu, 1, 1, /model/aggregation/fusions.1/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.1/branches.2.0/relu/Relu_output_0 254, Conv, 3, 1, /model/aggregation/fusions.1/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.1/branches.2.0/conv2/Conv_output_0 255, Relu, 1, 1, /model/aggregation/fusions.1/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.1/branches.2.0/relu_1/Relu_output_0 256, Conv, 3, 1, /model/aggregation/fusions.1/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.1/branches.2.0/conv3/Conv_output_0 257, Add, 2, 1, /model/aggregation/fusions.1/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.1/branches.2.0/Add_output_0 258, Relu, 1, 1, /model/aggregation/fusions.1/branches.2.0/Add_output_0, /model/aggregation/fusions.1/branches.2.0/relu_2/Relu_output_0 259, Conv, 3, 1, /model/aggregation/fusions.1/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 260, Resize, 3, 1, /model/aggregation/fusions.1/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.1/Resize_1_output_0 261, Add, 2, 1, /model/aggregation/fusions.1/Add_output_0, /model/aggregation/fusions.1/Add_1_output_0 262, Relu, 1, 1, /model/aggregation/fusions.1/Add_1_output_0, /model/aggregation/fusions.1/relu/Relu_output_0 263, Conv, 3, 1, /model/aggregation/fusions.1/relu/Relu_output_0, /model/aggregation/fusions.2/branches.0.0/conv1/Conv_output_0 264, Relu, 1, 1, /model/aggregation/fusions.2/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.2/branches.0.0/relu/Relu_output_0 265, Conv, 3, 1, /model/aggregation/fusions.2/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.2/branches.0.0/conv2/Conv_output_0 266, Relu, 1, 1, /model/aggregation/fusions.2/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.2/branches.0.0/relu_1/Relu_output_0 267, Conv, 3, 1, /model/aggregation/fusions.2/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.2/branches.0.0/conv3/Conv_output_0 268, Add, 2, 1, /model/aggregation/fusions.2/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.2/branches.0.0/Add_output_0 269, Relu, 1, 1, /model/aggregation/fusions.2/branches.0.0/Add_output_0, /model/aggregation/fusions.2/branches.0.0/relu_2/Relu_output_0 270, Conv, 3, 1, /model/aggregation/fusions.2/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 271, Conv, 3, 1, /model/aggregation/fusions.1/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 272, Add, 2, 1, /model/aggregation/fusions.1/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.1/Add_2_output_0 273, Conv, 3, 1, /model/aggregation/fusions.1/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 274, Resize, 3, 1, /model/aggregation/fusions.1/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.1/Resize_2_output_0 275, Add, 2, 1, /model/aggregation/fusions.1/Add_2_output_0, /model/aggregation/fusions.1/Add_3_output_0 276, Relu, 1, 1, /model/aggregation/fusions.1/Add_3_output_0, /model/aggregation/fusions.1/relu_1/Relu_output_0 277, Conv, 3, 1, /model/aggregation/fusions.1/relu_1/Relu_output_0, /model/aggregation/fusions.2/branches.1.0/conv1/Conv_output_0 278, Relu, 1, 1, /model/aggregation/fusions.2/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.2/branches.1.0/relu/Relu_output_0 279, Conv, 3, 1, /model/aggregation/fusions.2/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.2/branches.1.0/conv2/Conv_output_0 280, Relu, 1, 1, /model/aggregation/fusions.2/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.2/branches.1.0/relu_1/Relu_output_0 281, Conv, 3, 1, /model/aggregation/fusions.2/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.2/branches.1.0/conv3/Conv_output_0 282, Add, 2, 1, /model/aggregation/fusions.2/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.2/branches.1.0/Add_output_0 283, Relu, 1, 1, /model/aggregation/fusions.2/branches.1.0/Add_output_0, /model/aggregation/fusions.2/branches.1.0/relu_2/Relu_output_0 284, Add, 2, 1, /model/aggregation/fusions.2/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.2/Add_2_output_0 285, Conv, 3, 1, /model/aggregation/fusions.1/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 286, Relu, 1, 1, /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 287, Conv, 3, 1, /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 288, Conv, 3, 1, /model/aggregation/fusions.1/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.1/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 289, Add, 2, 1, /model/aggregation/fusions.1/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.1/Add_4_output_0 290, Add, 2, 1, /model/aggregation/fusions.1/Add_4_output_0, /model/aggregation/fusions.1/Add_5_output_0 291, Relu, 1, 1, /model/aggregation/fusions.1/Add_5_output_0, /model/aggregation/fusions.1/relu_2/Relu_output_0 292, Conv, 3, 1, /model/aggregation/fusions.1/relu_2/Relu_output_0, /model/aggregation/fusions.2/branches.2.0/conv1/Conv_output_0 293, Relu, 1, 1, /model/aggregation/fusions.2/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.2/branches.2.0/relu/Relu_output_0 294, Conv, 3, 1, /model/aggregation/fusions.2/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.2/branches.2.0/conv2/Conv_output_0 295, Relu, 1, 1, /model/aggregation/fusions.2/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.2/branches.2.0/relu_1/Relu_output_0 296, Conv, 3, 1, /model/aggregation/fusions.2/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.2/branches.2.0/conv3/Conv_output_0 297, Add, 2, 1, /model/aggregation/fusions.2/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.2/branches.2.0/Add_output_0 298, Relu, 1, 1, /model/aggregation/fusions.2/branches.2.0/Add_output_0, /model/aggregation/fusions.2/branches.2.0/relu_2/Relu_output_0 299, Conv, 3, 1, /model/aggregation/fusions.2/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 300, Resize, 3, 1, /model/aggregation/fusions.2/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.2/Resize_2_output_0 301, Add, 2, 1, /model/aggregation/fusions.2/Add_2_output_0, /model/aggregation/fusions.2/Add_3_output_0 302, Relu, 1, 1, /model/aggregation/fusions.2/Add_3_output_0, /model/aggregation/fusions.2/relu_1/Relu_output_0 303, Conv, 3, 1, /model/aggregation/fusions.2/relu_1/Relu_output_0, /model/aggregation/fusions.3/branches.1.0/conv1/Conv_output_0 304, Relu, 1, 1, /model/aggregation/fusions.3/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.3/branches.1.0/relu/Relu_output_0 305, Conv, 3, 1, /model/aggregation/fusions.3/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.3/branches.1.0/conv2/Conv_output_0 306, Relu, 1, 1, /model/aggregation/fusions.3/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.3/branches.1.0/relu_1/Relu_output_0 307, Conv, 3, 1, /model/aggregation/fusions.3/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.3/branches.1.0/conv3/Conv_output_0 308, Add, 2, 1, /model/aggregation/fusions.3/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.3/branches.1.0/Add_output_0 309, Relu, 1, 1, /model/aggregation/fusions.3/branches.1.0/Add_output_0, /model/aggregation/fusions.3/branches.1.0/relu_2/Relu_output_0 310, Conv, 3, 1, /model/aggregation/fusions.3/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 311, Resize, 3, 1, /model/aggregation/fusions.3/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.3/Resize_output_0 312, Conv, 3, 1, /model/aggregation/fusions.2/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 313, Resize, 3, 1, /model/aggregation/fusions.2/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.2/Resize_output_0 314, Add, 2, 1, /model/aggregation/fusions.2/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/Add_output_0 315, Conv, 3, 1, /model/aggregation/fusions.2/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 316, Resize, 3, 1, /model/aggregation/fusions.2/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.2/Resize_1_output_0 317, Add, 2, 1, /model/aggregation/fusions.2/Add_output_0, /model/aggregation/fusions.2/Add_1_output_0 318, Relu, 1, 1, /model/aggregation/fusions.2/Add_1_output_0, /model/aggregation/fusions.2/relu/Relu_output_0 319, Conv, 3, 1, /model/aggregation/fusions.2/relu/Relu_output_0, /model/aggregation/fusions.3/branches.0.0/conv1/Conv_output_0 320, Relu, 1, 1, /model/aggregation/fusions.3/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.3/branches.0.0/relu/Relu_output_0 321, Conv, 3, 1, /model/aggregation/fusions.3/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.3/branches.0.0/conv2/Conv_output_0 322, Relu, 1, 1, /model/aggregation/fusions.3/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.3/branches.0.0/relu_1/Relu_output_0 323, Conv, 3, 1, /model/aggregation/fusions.3/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.3/branches.0.0/conv3/Conv_output_0 324, Add, 2, 1, /model/aggregation/fusions.3/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.3/branches.0.0/Add_output_0 325, Relu, 1, 1, /model/aggregation/fusions.3/branches.0.0/Add_output_0, /model/aggregation/fusions.3/branches.0.0/relu_2/Relu_output_0 326, Add, 2, 1, /model/aggregation/fusions.3/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/Add_output_0 327, Conv, 3, 1, /model/aggregation/fusions.2/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 328, Relu, 1, 1, /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 329, Conv, 3, 1, /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 330, Conv, 3, 1, /model/aggregation/fusions.2/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.2/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 331, Add, 2, 1, /model/aggregation/fusions.2/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.2/Add_4_output_0 332, Add, 2, 1, /model/aggregation/fusions.2/Add_4_output_0, /model/aggregation/fusions.2/Add_5_output_0 333, Relu, 1, 1, /model/aggregation/fusions.2/Add_5_output_0, /model/aggregation/fusions.2/relu_2/Relu_output_0 334, Conv, 3, 1, /model/aggregation/fusions.2/relu_2/Relu_output_0, /model/aggregation/fusions.3/branches.2.0/conv1/Conv_output_0 335, Relu, 1, 1, /model/aggregation/fusions.3/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.3/branches.2.0/relu/Relu_output_0 336, Conv, 3, 1, /model/aggregation/fusions.3/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.3/branches.2.0/conv2/Conv_output_0 337, Relu, 1, 1, /model/aggregation/fusions.3/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.3/branches.2.0/relu_1/Relu_output_0 338, Conv, 3, 1, /model/aggregation/fusions.3/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.3/branches.2.0/conv3/Conv_output_0 339, Add, 2, 1, /model/aggregation/fusions.3/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.3/branches.2.0/Add_output_0 340, Relu, 1, 1, /model/aggregation/fusions.3/branches.2.0/Add_output_0, /model/aggregation/fusions.3/branches.2.0/relu_2/Relu_output_0 341, Conv, 3, 1, /model/aggregation/fusions.3/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 342, Resize, 3, 1, /model/aggregation/fusions.3/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.3/Resize_1_output_0 343, Add, 2, 1, /model/aggregation/fusions.3/Add_output_0, /model/aggregation/fusions.3/Add_1_output_0 344, Relu, 1, 1, /model/aggregation/fusions.3/Add_1_output_0, /model/aggregation/fusions.3/relu/Relu_output_0 345, Conv, 3, 1, /model/aggregation/fusions.3/relu/Relu_output_0, /model/aggregation/fusions.4/branches.0.0/conv1/Conv_output_0 346, Relu, 1, 1, /model/aggregation/fusions.4/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.4/branches.0.0/relu/Relu_output_0 347, Conv, 3, 1, /model/aggregation/fusions.4/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.4/branches.0.0/conv2/Conv_output_0 348, Relu, 1, 1, /model/aggregation/fusions.4/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.4/branches.0.0/relu_1/Relu_output_0 349, Conv, 3, 1, /model/aggregation/fusions.4/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.4/branches.0.0/conv3/Conv_output_0 350, Add, 2, 1, /model/aggregation/fusions.4/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.4/branches.0.0/Add_output_0 351, Relu, 1, 1, /model/aggregation/fusions.4/branches.0.0/Add_output_0, /model/aggregation/fusions.4/branches.0.0/relu_2/Relu_output_0 352, Conv, 3, 1, /model/aggregation/fusions.4/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 353, Conv, 3, 1, /model/aggregation/fusions.3/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 354, Add, 2, 1, /model/aggregation/fusions.3/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.3/Add_2_output_0 355, Conv, 3, 1, /model/aggregation/fusions.3/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 356, Resize, 3, 1, /model/aggregation/fusions.3/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.3/Resize_2_output_0 357, Add, 2, 1, /model/aggregation/fusions.3/Add_2_output_0, /model/aggregation/fusions.3/Add_3_output_0 358, Relu, 1, 1, /model/aggregation/fusions.3/Add_3_output_0, /model/aggregation/fusions.3/relu_1/Relu_output_0 359, Conv, 3, 1, /model/aggregation/fusions.3/relu_1/Relu_output_0, /model/aggregation/fusions.4/branches.1.0/conv1/Conv_output_0 360, Relu, 1, 1, /model/aggregation/fusions.4/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.4/branches.1.0/relu/Relu_output_0 361, Conv, 3, 1, /model/aggregation/fusions.4/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.4/branches.1.0/conv2/Conv_output_0 362, Relu, 1, 1, /model/aggregation/fusions.4/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.4/branches.1.0/relu_1/Relu_output_0 363, Conv, 3, 1, /model/aggregation/fusions.4/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.4/branches.1.0/conv3/Conv_output_0 364, Add, 2, 1, /model/aggregation/fusions.4/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.4/branches.1.0/Add_output_0 365, Relu, 1, 1, /model/aggregation/fusions.4/branches.1.0/Add_output_0, /model/aggregation/fusions.4/branches.1.0/relu_2/Relu_output_0 366, Add, 2, 1, /model/aggregation/fusions.4/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.4/Add_2_output_0 367, Conv, 3, 1, /model/aggregation/fusions.3/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 368, Relu, 1, 1, /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 369, Conv, 3, 1, /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 370, Conv, 3, 1, /model/aggregation/fusions.3/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.3/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 371, Add, 2, 1, /model/aggregation/fusions.3/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.3/Add_4_output_0 372, Add, 2, 1, /model/aggregation/fusions.3/Add_4_output_0, /model/aggregation/fusions.3/Add_5_output_0 373, Relu, 1, 1, /model/aggregation/fusions.3/Add_5_output_0, /model/aggregation/fusions.3/relu_2/Relu_output_0 374, Conv, 3, 1, /model/aggregation/fusions.3/relu_2/Relu_output_0, /model/aggregation/fusions.4/branches.2.0/conv1/Conv_output_0 375, Relu, 1, 1, /model/aggregation/fusions.4/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.4/branches.2.0/relu/Relu_output_0 376, Conv, 3, 1, /model/aggregation/fusions.4/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.4/branches.2.0/conv2/Conv_output_0 377, Relu, 1, 1, /model/aggregation/fusions.4/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.4/branches.2.0/relu_1/Relu_output_0 378, Conv, 3, 1, /model/aggregation/fusions.4/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.4/branches.2.0/conv3/Conv_output_0 379, Add, 2, 1, /model/aggregation/fusions.4/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.4/branches.2.0/Add_output_0 380, Relu, 1, 1, /model/aggregation/fusions.4/branches.2.0/Add_output_0, /model/aggregation/fusions.4/branches.2.0/relu_2/Relu_output_0 381, Conv, 3, 1, /model/aggregation/fusions.4/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 382, Resize, 3, 1, /model/aggregation/fusions.4/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.4/Resize_2_output_0 383, Add, 2, 1, /model/aggregation/fusions.4/Add_2_output_0, /model/aggregation/fusions.4/Add_3_output_0 384, Relu, 1, 1, /model/aggregation/fusions.4/Add_3_output_0, /model/aggregation/fusions.4/relu_1/Relu_output_0 385, Conv, 3, 1, /model/aggregation/fusions.4/relu_1/Relu_output_0, /model/aggregation/fusions.5/branches.1.0/conv1/Conv_output_0 386, Relu, 1, 1, /model/aggregation/fusions.5/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.5/branches.1.0/relu/Relu_output_0 387, Conv, 3, 1, /model/aggregation/fusions.5/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.5/branches.1.0/conv2/Conv_output_0 388, Relu, 1, 1, /model/aggregation/fusions.5/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.5/branches.1.0/relu_1/Relu_output_0 389, Conv, 3, 1, /model/aggregation/fusions.5/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.5/branches.1.0/conv3/Conv_output_0 390, Add, 2, 1, /model/aggregation/fusions.5/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.5/branches.1.0/Add_output_0 391, Relu, 1, 1, /model/aggregation/fusions.5/branches.1.0/Add_output_0, /model/aggregation/fusions.5/branches.1.0/relu_2/Relu_output_0 392, Conv, 3, 1, /model/aggregation/fusions.5/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 393, Resize, 3, 1, /model/aggregation/fusions.5/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.5/Resize_output_0 394, Conv, 3, 1, /model/aggregation/fusions.4/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 395, Resize, 3, 1, /model/aggregation/fusions.4/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.4/Resize_output_0 396, Add, 2, 1, /model/aggregation/fusions.4/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/Add_output_0 397, Conv, 3, 1, /model/aggregation/fusions.4/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 398, Resize, 3, 1, /model/aggregation/fusions.4/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.4/Resize_1_output_0 399, Add, 2, 1, /model/aggregation/fusions.4/Add_output_0, /model/aggregation/fusions.4/Add_1_output_0 400, Relu, 1, 1, /model/aggregation/fusions.4/Add_1_output_0, /model/aggregation/fusions.4/relu/Relu_output_0 401, Conv, 3, 1, /model/aggregation/fusions.4/relu/Relu_output_0, /model/aggregation/fusions.5/branches.0.0/conv1/Conv_output_0 402, Relu, 1, 1, /model/aggregation/fusions.5/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.5/branches.0.0/relu/Relu_output_0 403, Conv, 3, 1, /model/aggregation/fusions.5/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.5/branches.0.0/conv2/Conv_output_0 404, Relu, 1, 1, /model/aggregation/fusions.5/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.5/branches.0.0/relu_1/Relu_output_0 405, Conv, 3, 1, /model/aggregation/fusions.5/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.5/branches.0.0/conv3/Conv_output_0 406, Add, 2, 1, /model/aggregation/fusions.5/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.5/branches.0.0/Add_output_0 407, Relu, 1, 1, /model/aggregation/fusions.5/branches.0.0/Add_output_0, /model/aggregation/fusions.5/branches.0.0/relu_2/Relu_output_0 408, Add, 2, 1, /model/aggregation/fusions.5/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/Add_output_0 409, Conv, 3, 1, /model/aggregation/fusions.4/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 410, Relu, 1, 1, /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 411, Conv, 3, 1, /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 412, Conv, 3, 1, /model/aggregation/fusions.4/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.4/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 413, Add, 2, 1, /model/aggregation/fusions.4/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.4/Add_4_output_0 414, Add, 2, 1, /model/aggregation/fusions.4/Add_4_output_0, /model/aggregation/fusions.4/Add_5_output_0 415, Relu, 1, 1, /model/aggregation/fusions.4/Add_5_output_0, /model/aggregation/fusions.4/relu_2/Relu_output_0 416, Conv, 3, 1, /model/aggregation/fusions.4/relu_2/Relu_output_0, /model/aggregation/fusions.5/branches.2.0/conv1/Conv_output_0 417, Relu, 1, 1, /model/aggregation/fusions.5/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.5/branches.2.0/relu/Relu_output_0 418, Conv, 3, 1, /model/aggregation/fusions.5/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.5/branches.2.0/conv2/Conv_output_0 419, Relu, 1, 1, /model/aggregation/fusions.5/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.5/branches.2.0/relu_1/Relu_output_0 420, Conv, 3, 1, /model/aggregation/fusions.5/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.5/branches.2.0/conv3/Conv_output_0 421, Add, 2, 1, /model/aggregation/fusions.5/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.5/branches.2.0/Add_output_0 422, Relu, 1, 1, /model/aggregation/fusions.5/branches.2.0/Add_output_0, /model/aggregation/fusions.5/branches.2.0/relu_2/Relu_output_0 423, Conv, 3, 1, /model/aggregation/fusions.5/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 424, Resize, 3, 1, /model/aggregation/fusions.5/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.5/Resize_1_output_0 425, Add, 2, 1, /model/aggregation/fusions.5/Add_output_0, /model/aggregation/fusions.5/Add_1_output_0 426, Relu, 1, 1, /model/aggregation/fusions.5/Add_1_output_0, /model/aggregation/fusions.5/relu/Relu_output_0 427, Conv, 3, 1, /model/aggregation/fusions.5/relu/Relu_output_0, /model/aggregation/fusions.6/branches.0.0/conv1/Conv_output_0 428, Relu, 1, 1, /model/aggregation/fusions.6/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.6/branches.0.0/relu/Relu_output_0 429, Conv, 3, 1, /model/aggregation/fusions.6/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.6/branches.0.0/conv2/Conv_output_0 430, Relu, 1, 1, /model/aggregation/fusions.6/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.6/branches.0.0/relu_1/Relu_output_0 431, Conv, 3, 1, /model/aggregation/fusions.6/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.6/branches.0.0/conv3/Conv_output_0 432, Add, 2, 1, /model/aggregation/fusions.6/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.6/branches.0.0/Add_output_0 433, Relu, 1, 1, /model/aggregation/fusions.6/branches.0.0/Add_output_0, /model/aggregation/fusions.6/branches.0.0/relu_2/Relu_output_0 434, Conv, 3, 1, /model/aggregation/fusions.6/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 435, Conv, 3, 1, /model/aggregation/fusions.5/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 436, Add, 2, 1, /model/aggregation/fusions.5/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.5/Add_2_output_0 437, Conv, 3, 1, /model/aggregation/fusions.5/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 438, Resize, 3, 1, /model/aggregation/fusions.5/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.5/Resize_2_output_0 439, Add, 2, 1, /model/aggregation/fusions.5/Add_2_output_0, /model/aggregation/fusions.5/Add_3_output_0 440, Relu, 1, 1, /model/aggregation/fusions.5/Add_3_output_0, /model/aggregation/fusions.5/relu_1/Relu_output_0 441, Conv, 3, 1, /model/aggregation/fusions.5/relu_1/Relu_output_0, /model/aggregation/fusions.6/branches.1.0/conv1/Conv_output_0 442, Relu, 1, 1, /model/aggregation/fusions.6/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.6/branches.1.0/relu/Relu_output_0 443, Conv, 3, 1, /model/aggregation/fusions.6/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.6/branches.1.0/conv2/Conv_output_0 444, Relu, 1, 1, /model/aggregation/fusions.6/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.6/branches.1.0/relu_1/Relu_output_0 445, Conv, 3, 1, /model/aggregation/fusions.6/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.6/branches.1.0/conv3/Conv_output_0 446, Add, 2, 1, /model/aggregation/fusions.6/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.6/branches.1.0/Add_output_0 447, Relu, 1, 1, /model/aggregation/fusions.6/branches.1.0/Add_output_0, /model/aggregation/fusions.6/branches.1.0/relu_2/Relu_output_0 448, Add, 2, 1, /model/aggregation/fusions.6/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.6/Add_2_output_0 449, Conv, 3, 1, /model/aggregation/fusions.5/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 450, Relu, 1, 1, /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 451, Conv, 3, 1, /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 452, Conv, 3, 1, /model/aggregation/fusions.5/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.5/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 453, Add, 2, 1, /model/aggregation/fusions.5/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.5/Add_4_output_0 454, Add, 2, 1, /model/aggregation/fusions.5/Add_4_output_0, /model/aggregation/fusions.5/Add_5_output_0 455, Relu, 1, 1, /model/aggregation/fusions.5/Add_5_output_0, /model/aggregation/fusions.5/relu_2/Relu_output_0 456, Conv, 3, 1, /model/aggregation/fusions.5/relu_2/Relu_output_0, /model/aggregation/fusions.6/branches.2.0/conv1/Conv_output_0 457, Relu, 1, 1, /model/aggregation/fusions.6/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.6/branches.2.0/relu/Relu_output_0 458, Conv, 3, 1, /model/aggregation/fusions.6/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.6/branches.2.0/conv2/Conv_output_0 459, Relu, 1, 1, /model/aggregation/fusions.6/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.6/branches.2.0/relu_1/Relu_output_0 460, Conv, 3, 1, /model/aggregation/fusions.6/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.6/branches.2.0/conv3/Conv_output_0 461, Add, 2, 1, /model/aggregation/fusions.6/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.6/branches.2.0/Add_output_0 462, Relu, 1, 1, /model/aggregation/fusions.6/branches.2.0/Add_output_0, /model/aggregation/fusions.6/branches.2.0/relu_2/Relu_output_0 463, Conv, 3, 1, /model/aggregation/fusions.6/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 464, Resize, 3, 1, /model/aggregation/fusions.6/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.6/Resize_2_output_0 465, Add, 2, 1, /model/aggregation/fusions.6/Add_2_output_0, /model/aggregation/fusions.6/Add_3_output_0 466, Relu, 1, 1, /model/aggregation/fusions.6/Add_3_output_0, /model/aggregation/fusions.6/relu_1/Relu_output_0 467, Conv, 3, 1, /model/aggregation/fusions.6/relu_1/Relu_output_0, /model/aggregation/fusions.7/branches.1.0/conv1/Conv_output_0 468, Relu, 1, 1, /model/aggregation/fusions.7/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.7/branches.1.0/relu/Relu_output_0 469, Conv, 3, 1, /model/aggregation/fusions.7/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.7/branches.1.0/conv2/Conv_output_0 470, Relu, 1, 1, /model/aggregation/fusions.7/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.7/branches.1.0/relu_1/Relu_output_0 471, Conv, 3, 1, /model/aggregation/fusions.7/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.7/branches.1.0/conv3/Conv_output_0 472, Add, 2, 1, /model/aggregation/fusions.7/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.7/branches.1.0/Add_output_0 473, Relu, 1, 1, /model/aggregation/fusions.7/branches.1.0/Add_output_0, /model/aggregation/fusions.7/branches.1.0/relu_2/Relu_output_0 474, Conv, 3, 1, /model/aggregation/fusions.6/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 475, Resize, 3, 1, /model/aggregation/fusions.6/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.6/Resize_output_0 476, Add, 2, 1, /model/aggregation/fusions.6/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/Add_output_0 477, Conv, 3, 1, /model/aggregation/fusions.6/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 478, Resize, 3, 1, /model/aggregation/fusions.6/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.6/Resize_1_output_0 479, Add, 2, 1, /model/aggregation/fusions.6/Add_output_0, /model/aggregation/fusions.6/Add_1_output_0 480, Relu, 1, 1, /model/aggregation/fusions.6/Add_1_output_0, /model/aggregation/fusions.6/relu/Relu_output_0 481, Conv, 3, 1, /model/aggregation/fusions.6/relu/Relu_output_0, /model/aggregation/fusions.7/branches.0.0/conv1/Conv_output_0 482, Relu, 1, 1, /model/aggregation/fusions.7/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.7/branches.0.0/relu/Relu_output_0 483, Conv, 3, 1, /model/aggregation/fusions.7/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.7/branches.0.0/conv2/Conv_output_0 484, Relu, 1, 1, /model/aggregation/fusions.7/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.7/branches.0.0/relu_1/Relu_output_0 485, Conv, 3, 1, /model/aggregation/fusions.7/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.7/branches.0.0/conv3/Conv_output_0 486, Add, 2, 1, /model/aggregation/fusions.7/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.7/branches.0.0/Add_output_0 487, Relu, 1, 1, /model/aggregation/fusions.7/branches.0.0/Add_output_0, /model/aggregation/fusions.7/branches.0.0/relu_2/Relu_output_0 488, Conv, 3, 1, /model/aggregation/fusions.7/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 489, Add, 2, 1, /model/aggregation/fusions.7/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.7/Add_2_output_0 490, Conv, 3, 1, /model/aggregation/fusions.6/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 491, Relu, 1, 1, /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 492, Conv, 3, 1, /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 493, Conv, 3, 1, /model/aggregation/fusions.6/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.6/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 494, Add, 2, 1, /model/aggregation/fusions.6/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.6/Add_4_output_0 495, Add, 2, 1, /model/aggregation/fusions.6/Add_4_output_0, /model/aggregation/fusions.6/Add_5_output_0 496, Relu, 1, 1, /model/aggregation/fusions.6/Add_5_output_0, /model/aggregation/fusions.6/relu_2/Relu_output_0 497, Conv, 3, 1, /model/aggregation/fusions.6/relu_2/Relu_output_0, /model/aggregation/fusions.7/branches.2.0/conv1/Conv_output_0 498, Relu, 1, 1, /model/aggregation/fusions.7/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.7/branches.2.0/relu/Relu_output_0 499, Conv, 3, 1, /model/aggregation/fusions.7/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.7/branches.2.0/conv2/Conv_output_0 500, Relu, 1, 1, /model/aggregation/fusions.7/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.7/branches.2.0/relu_1/Relu_output_0 501, Conv, 3, 1, /model/aggregation/fusions.7/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.7/branches.2.0/conv3/Conv_output_0 502, Add, 2, 1, /model/aggregation/fusions.7/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.7/branches.2.0/Add_output_0 503, Relu, 1, 1, /model/aggregation/fusions.7/branches.2.0/Add_output_0, /model/aggregation/fusions.7/branches.2.0/relu_2/Relu_output_0 504, Conv, 3, 1, /model/aggregation/fusions.7/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 505, Resize, 3, 1, /model/aggregation/fusions.7/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.7/Resize_2_output_0 506, Add, 2, 1, /model/aggregation/fusions.7/Add_2_output_0, /model/aggregation/fusions.7/Add_3_output_0 507, Relu, 1, 1, /model/aggregation/fusions.7/Add_3_output_0, /model/aggregation/fusions.7/relu_1/Relu_output_0 508, Conv, 3, 1, /model/aggregation/fusions.7/relu_1/Relu_output_0, /model/aggregation/fusions.8/branches.1.0/conv1/Conv_output_0 509, Relu, 1, 1, /model/aggregation/fusions.8/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.8/branches.1.0/relu/Relu_output_0 510, Conv, 3, 1, /model/aggregation/fusions.8/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.8/branches.1.0/conv2/Conv_output_0 511, Relu, 1, 1, /model/aggregation/fusions.8/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.8/branches.1.0/relu_1/Relu_output_0 512, Conv, 3, 1, /model/aggregation/fusions.8/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.8/branches.1.0/conv3/Conv_output_0 513, Add, 2, 1, /model/aggregation/fusions.8/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.8/branches.1.0/Add_output_0 514, Relu, 1, 1, /model/aggregation/fusions.8/branches.1.0/Add_output_0, /model/aggregation/fusions.8/branches.1.0/relu_2/Relu_output_0 515, Conv, 3, 1, /model/aggregation/fusions.8/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 516, Resize, 3, 1, /model/aggregation/fusions.8/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.8/Resize_output_0 517, Conv, 3, 1, /model/aggregation/fusions.7/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 518, Resize, 3, 1, /model/aggregation/fusions.7/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.7/Resize_output_0 519, Add, 2, 1, /model/aggregation/fusions.7/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/Add_output_0 520, Conv, 3, 1, /model/aggregation/fusions.7/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 521, Resize, 3, 1, /model/aggregation/fusions.7/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.7/Resize_1_output_0 522, Add, 2, 1, /model/aggregation/fusions.7/Add_output_0, /model/aggregation/fusions.7/Add_1_output_0 523, Relu, 1, 1, /model/aggregation/fusions.7/Add_1_output_0, /model/aggregation/fusions.7/relu/Relu_output_0 524, Conv, 3, 1, /model/aggregation/fusions.7/relu/Relu_output_0, /model/aggregation/fusions.8/branches.0.0/conv1/Conv_output_0 525, Relu, 1, 1, /model/aggregation/fusions.8/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.8/branches.0.0/relu/Relu_output_0 526, Conv, 3, 1, /model/aggregation/fusions.8/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.8/branches.0.0/conv2/Conv_output_0 527, Relu, 1, 1, /model/aggregation/fusions.8/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.8/branches.0.0/relu_1/Relu_output_0 528, Conv, 3, 1, /model/aggregation/fusions.8/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.8/branches.0.0/conv3/Conv_output_0 529, Add, 2, 1, /model/aggregation/fusions.8/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.8/branches.0.0/Add_output_0 530, Relu, 1, 1, /model/aggregation/fusions.8/branches.0.0/Add_output_0, /model/aggregation/fusions.8/branches.0.0/relu_2/Relu_output_0 531, Add, 2, 1, /model/aggregation/fusions.8/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/Add_output_0 532, Conv, 3, 1, /model/aggregation/fusions.7/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 533, Relu, 1, 1, /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 534, Conv, 3, 1, /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 535, Conv, 3, 1, /model/aggregation/fusions.7/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.7/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 536, Add, 2, 1, /model/aggregation/fusions.7/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.7/Add_4_output_0 537, Add, 2, 1, /model/aggregation/fusions.7/Add_4_output_0, /model/aggregation/fusions.7/Add_5_output_0 538, Relu, 1, 1, /model/aggregation/fusions.7/Add_5_output_0, /model/aggregation/fusions.7/relu_2/Relu_output_0 539, Conv, 3, 1, /model/aggregation/fusions.7/relu_2/Relu_output_0, /model/aggregation/fusions.8/branches.2.0/conv1/Conv_output_0 540, Relu, 1, 1, /model/aggregation/fusions.8/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.8/branches.2.0/relu/Relu_output_0 541, Conv, 3, 1, /model/aggregation/fusions.8/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.8/branches.2.0/conv2/Conv_output_0 542, Relu, 1, 1, /model/aggregation/fusions.8/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.8/branches.2.0/relu_1/Relu_output_0 543, Conv, 3, 1, /model/aggregation/fusions.8/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.8/branches.2.0/conv3/Conv_output_0 544, Add, 2, 1, /model/aggregation/fusions.8/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.8/branches.2.0/Add_output_0 545, Relu, 1, 1, /model/aggregation/fusions.8/branches.2.0/Add_output_0, /model/aggregation/fusions.8/branches.2.0/relu_2/Relu_output_0 546, Conv, 3, 1, /model/aggregation/fusions.8/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 547, Resize, 3, 1, /model/aggregation/fusions.8/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.8/Resize_1_output_0 548, Add, 2, 1, /model/aggregation/fusions.8/Add_output_0, /model/aggregation/fusions.8/Add_1_output_0 549, Relu, 1, 1, /model/aggregation/fusions.8/Add_1_output_0, /model/aggregation/fusions.8/relu/Relu_output_0 550, Conv, 3, 1, /model/aggregation/fusions.8/relu/Relu_output_0, /model/aggregation/fusions.9/branches.0.0/conv1/Conv_output_0 551, Relu, 1, 1, /model/aggregation/fusions.9/branches.0.0/conv1/Conv_output_0, /model/aggregation/fusions.9/branches.0.0/relu/Relu_output_0 552, Conv, 3, 1, /model/aggregation/fusions.9/branches.0.0/relu/Relu_output_0, /model/aggregation/fusions.9/branches.0.0/conv2/Conv_output_0 553, Relu, 1, 1, /model/aggregation/fusions.9/branches.0.0/conv2/Conv_output_0, /model/aggregation/fusions.9/branches.0.0/relu_1/Relu_output_0 554, Conv, 3, 1, /model/aggregation/fusions.9/branches.0.0/relu_1/Relu_output_0, /model/aggregation/fusions.9/branches.0.0/conv3/Conv_output_0 555, Add, 2, 1, /model/aggregation/fusions.9/branches.0.0/conv3/Conv_output_0, /model/aggregation/fusions.9/branches.0.0/Add_output_0 556, Relu, 1, 1, /model/aggregation/fusions.9/branches.0.0/Add_output_0, /model/aggregation/fusions.9/branches.0.0/relu_2/Relu_output_0 557, Conv, 3, 1, /model/aggregation/fusions.8/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0 558, Add, 2, 1, /model/aggregation/fusions.8/fuse_layers.1.0/fuse_layers.1.0.0/fuse_layers.1.0.0.0/Conv_output_0, /model/aggregation/fusions.8/Add_2_output_0 559, Conv, 3, 1, /model/aggregation/fusions.8/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0 560, Resize, 3, 1, /model/aggregation/fusions.8/fuse_layers.1.2/fuse_layers.1.2.0/Conv_output_0, /model/aggregation/fusions.8/Resize_2_output_0 561, Add, 2, 1, /model/aggregation/fusions.8/Add_2_output_0, /model/aggregation/fusions.8/Add_3_output_0 562, Relu, 1, 1, /model/aggregation/fusions.8/Add_3_output_0, /model/aggregation/fusions.8/relu_1/Relu_output_0 563, Conv, 3, 1, /model/aggregation/fusions.8/relu_1/Relu_output_0, /model/aggregation/fusions.9/branches.1.0/conv1/Conv_output_0 564, Relu, 1, 1, /model/aggregation/fusions.9/branches.1.0/conv1/Conv_output_0, /model/aggregation/fusions.9/branches.1.0/relu/Relu_output_0 565, Conv, 3, 1, /model/aggregation/fusions.9/branches.1.0/relu/Relu_output_0, /model/aggregation/fusions.9/branches.1.0/conv2/Conv_output_0 566, Relu, 1, 1, /model/aggregation/fusions.9/branches.1.0/conv2/Conv_output_0, /model/aggregation/fusions.9/branches.1.0/relu_1/Relu_output_0 567, Conv, 3, 1, /model/aggregation/fusions.9/branches.1.0/relu_1/Relu_output_0, /model/aggregation/fusions.9/branches.1.0/conv3/Conv_output_0 568, Add, 2, 1, /model/aggregation/fusions.9/branches.1.0/conv3/Conv_output_0, /model/aggregation/fusions.9/branches.1.0/Add_output_0 569, Relu, 1, 1, /model/aggregation/fusions.9/branches.1.0/Add_output_0, /model/aggregation/fusions.9/branches.1.0/relu_2/Relu_output_0 570, Conv, 3, 1, /model/aggregation/fusions.9/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.9/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0 571, Resize, 3, 1, /model/aggregation/fusions.9/fuse_layers.0.1/fuse_layers.0.1.0/Conv_output_0, /model/aggregation/fusions.9/Resize_output_0 572, Add, 2, 1, /model/aggregation/fusions.9/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.9/Add_output_0 573, Conv, 3, 1, /model/aggregation/fusions.8/branches.0.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0 574, Relu, 1, 1, /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.0/Conv_output_0, /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0 575, Conv, 3, 1, /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.0/fuse_layers.2.0.0.2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0 576, Conv, 3, 1, /model/aggregation/fusions.8/branches.1.0/relu_2/Relu_output_0, /model/aggregation/fusions.8/fuse_layers.2.1/fuse_layers.2.1.0/fuse_layers.2.1.0.0/Conv_output_0 577, Add, 2, 1, /model/aggregation/fusions.8/fuse_layers.2.0/fuse_layers.2.0.1/fuse_layers.2.0.1.0/Conv_output_0, /model/aggregation/fusions.8/Add_4_output_0 578, Add, 2, 1, /model/aggregation/fusions.8/Add_4_output_0, /model/aggregation/fusions.8/Add_5_output_0 579, Relu, 1, 1, /model/aggregation/fusions.8/Add_5_output_0, /model/aggregation/fusions.8/relu_2/Relu_output_0 580, Conv, 3, 1, /model/aggregation/fusions.8/relu_2/Relu_output_0, /model/aggregation/fusions.9/branches.2.0/conv1/Conv_output_0 581, Relu, 1, 1, /model/aggregation/fusions.9/branches.2.0/conv1/Conv_output_0, /model/aggregation/fusions.9/branches.2.0/relu/Relu_output_0 582, Conv, 3, 1, /model/aggregation/fusions.9/branches.2.0/relu/Relu_output_0, /model/aggregation/fusions.9/branches.2.0/conv2/Conv_output_0 583, Relu, 1, 1, /model/aggregation/fusions.9/branches.2.0/conv2/Conv_output_0, /model/aggregation/fusions.9/branches.2.0/relu_1/Relu_output_0 584, Conv, 3, 1, /model/aggregation/fusions.9/branches.2.0/relu_1/Relu_output_0, /model/aggregation/fusions.9/branches.2.0/conv3/Conv_output_0 585, Add, 2, 1, /model/aggregation/fusions.9/branches.2.0/conv3/Conv_output_0, /model/aggregation/fusions.9/branches.2.0/Add_output_0 586, Relu, 1, 1, /model/aggregation/fusions.9/branches.2.0/Add_output_0, /model/aggregation/fusions.9/branches.2.0/relu_2/Relu_output_0 587, Conv, 3, 1, /model/aggregation/fusions.9/branches.2.0/relu_2/Relu_output_0, /model/aggregation/fusions.9/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0 588, Resize, 3, 1, /model/aggregation/fusions.9/fuse_layers.0.2/fuse_layers.0.2.0/Conv_output_0, /model/aggregation/fusions.9/Resize_1_output_0 589, Add, 2, 1, /model/aggregation/fusions.9/Add_output_0, /model/aggregation/fusions.9/Add_1_output_0 590, Relu, 1, 1, /model/aggregation/fusions.9/Add_1_output_0, /model/aggregation/fusions.9/relu/Relu_output_0 591, Conv, 3, 1, /model/aggregation/fusions.9/relu/Relu_output_0, /model/aggregation/final_conv.0/Conv_output_0 592, Conv, 2, 1, /model/aggregation/final_conv.0/Conv_output_0, /model/disparity_estimations.0/Conv_output_0 593, Resize, 3, 1, /model/disparity_estimations.0/Conv_output_0, /model/refinement.0/Resize_output_0 594, Conv, 2, 1, /model/refinement.0/Resize_output_0, /model/refinement.0/Conv_1_output_0 595, Concat, 2, 1, /model/refinement.0/Conv_1_output_0, /model/refinement.0/Concat_output_0 596, Conv, 3, 1, /model/refinement.0/Concat_output_0, /model/refinement.0/conv/Conv_output_0 597, Conv, 3, 1, /model/refinement.0/conv/Conv_output_0, /model/refinement.0/dilated_blocks/dilated_blocks.0/conv1/Conv_output_0 598, Relu, 1, 1, /model/refinement.0/dilated_blocks/dilated_blocks.0/conv1/Conv_output_0, /model/refinement.0/dilated_blocks/dilated_blocks.0/Relu_output_0 599, Conv, 3, 1, /model/refinement.0/dilated_blocks/dilated_blocks.0/Relu_output_0, /model/refinement.0/dilated_blocks/dilated_blocks.0/conv2/Conv_output_0 600, Add, 2, 1, /model/refinement.0/dilated_blocks/dilated_blocks.0/conv2/Conv_output_0, /model/refinement.0/dilated_blocks/dilated_blocks.0/Add_output_0 601, Conv, 3, 1, /model/refinement.0/dilated_blocks/dilated_blocks.0/Add_output_0, /model/refinement.0/final_conv/Conv_output_0 602, Add, 2, 1, /model/refinement.0/Conv_1_output_0, /model/refinement.0/Add_output_0 603, Relu, 1, 1, /model/refinement.0/Add_output_0, disp5 Input tensor name - image1 Output tensor name - disp5 ~~~~~~~~~~~~~~~~~ infer image ~~~~~~~~~~~~~~~~~ 模型输入节点数量 input size : 1 当前输入节点: image1 /home/root/metoak-demo/calib_images_rgb/1711950848_02393.png image1 : (1, 3, 640, 640) Graph Domain TO version : 18In TIDL_onnxRtImportInit subgraph_name=disp5 Layer 0, subgraph id disp5, name=disp5 Layer 1, subgraph id disp5, name=image1 In TIDL_runtimesOptimizeNet: LayerIndex = 606, dataIndex = 605 ************** Frame index 1 : Running float import ************* In TIDL_runtimesPostProcessNet In TIDL_runtimesPostProcessNet 1 In TIDL_runtimesPostProcessNet 2 In TIDL_runtimesPostProcessNet 3 SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_3/up_conv/up_conv.0_1/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_2/up_conv/up_conv.0_1/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_3/up_conv/up_conv.0/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_2/up_conv/up_conv.0/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.0/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.1/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.0/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.0/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.1/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.1/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.2/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.3/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.2/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.2/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.3/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.3/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.4/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.5/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.4/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.4/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.5/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.5/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.6/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.6/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.6/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.7/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.8/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.7/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.7/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.8/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.8/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.9/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.9/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/refinement.0/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. **************************************************** ** 34 WARNINGS 0 ERRORS ** **************************************************** In TIDL_runtimesPostProcessNet 4 ************ in TIDL_subgraphRtCreate ************ The soft limit is 2048 The hard limit is 2048 MEM: Init ... !!! MEM: Init ... Done !!! 0.0s: VX_ZONE_INIT:Enabled 0.5s: VX_ZONE_ERROR:Enabled 0.7s: VX_ZONE_WARNING:Enabled 0.3401s: VX_ZONE_INIT:[tivxInit:185] Initialization Done !!! ************ TIDL_subgraphRtCreate done ************ 2024-05-17 06:26:55.525579994 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 ******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, paddingWait,LayerWithoutPad,LayerHandleCopy, BackupCycles, RestoreCycles,Multic7xContextCopyCycles, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 4, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 5, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 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477, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, Sum of Layer Cycles 0 Sub Graph Stats 230.000000 6814135.000000 4329.000000 ******* TIDL_subgraphRtInvoke done ******** ********** Frame Index 2 : Running float inference ********** onnx infer time: 6830.601905 Save prediction: /home/root/metoak-demo/calib_images_rgb_predictions/0.128483@1697508245_123626.png ~~~~~~~~~~~~~~~~~ infer image ~~~~~~~~~~~~~~~~~ 模型输入节点数量 input size : 1 当前输入节点: image1 /home/root/metoak-demo/calib_images_rgb/N2_096_2M_20230408_081724_ningxia_yinchuan_0A_0_0@3@rr@1689322344_13431.png image1 : (1, 3, 640, 640) 2024-05-17 06:27:09.386372898 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, 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infer time: 6941.398864 Save prediction: /home/root/metoak-demo/calib_images_rgb_predictions/N2_096_2M_20230408_081724_ningxia_yinchuan_0A_0_0@3@rr@1689322344_13431.png ~~~~~~~~~~~~~~~~~ infer image ~~~~~~~~~~~~~~~~~ 模型输入节点数量 input size : 1 当前输入节点: image1 /home/root/metoak-demo/calib_images_rgb/N2_077_2M_20230408_083313_ningxia_yinchuan_0A_0_0@0@rr@1682350048_13320.png image1 : (1, 3, 640, 640) 2024-05-17 06:27:16.392763893 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, paddingWait,LayerWithoutPad,LayerHandleCopy, BackupCycles, RestoreCycles,Multic7xContextCopyCycles, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 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input size : 1 当前输入节点: image1 /home/root/metoak-demo/calib_images_rgb/N2_077_2M_20230408_091641_ningxia_yinchuan_20H_0_0@0@rr@1682376523_65840.png image1 : (1, 3, 640, 640) 2024-05-17 06:27:23.588807583 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, paddingWait,LayerWithoutPad,LayerHandleCopy, BackupCycles, RestoreCycles,Multic7xContextCopyCycles, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 4, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 5, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 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execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, paddingWait,LayerWithoutPad,LayerHandleCopy, BackupCycles, RestoreCycles,Multic7xContextCopyCycles, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 4, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 5, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 6, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 7, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 8, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 9, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 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******* TIDL_subgraphRtInvoke done ******** ********** Frame Index 7 : Running float inference ********** onnx infer time: 6850.91989 Save prediction: /home/root/metoak-demo/calib_images_rgb_predictions/N2_096_2M_20230408_075407_ningxia_yinchuan_0A_0_0@2@rr@1689325150_01638.png ~~~~~~~~~~~~~~~~~ infer image ~~~~~~~~~~~~~~~~~ 模型输入节点数量 input size : 1 当前输入节点: image1 /home/root/metoak-demo/calib_images_rgb/N2_077_2M_20230408_111638_ningxia_yinchuan_1D_0_4@-2@rr@1682385239_211520.png image1 : (1, 3, 640, 640) 2024-05-17 06:27:44.700786008 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, 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/home/root/metoak-demo/calib_images_rgb_predictions/N2_077_2M_20230408_111638_ningxia_yinchuan_1D_0_4@-2@rr@1682385239_211520.png ~~~~~~~~~~~~~~~~~ infer image ~~~~~~~~~~~~~~~~~ 模型输入节点数量 input size : 1 当前输入节点: image1 /home/root/metoak-demo/calib_images_rgb/N2_077_2M_20230408_084502_ningxia_yinchuan_1H_0_0@0@rr@1682351192_29180.png image1 : (1, 3, 640, 640) 2024-05-17 06:27:51.615222959 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, paddingWait,LayerWithoutPad,LayerHandleCopy, BackupCycles, RestoreCycles,Multic7xContextCopyCycles, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, 0, 0, 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/home/root/metoak-demo/calib_images_rgb/0.122552@1697509405_159561.png image1 : (1, 3, 640, 640) 2024-05-17 06:27:58.524841325 [W:onnxruntime:, execution_frame.cc:835 VerifyOutputSizes] Expected shape from model of {1,1,320,640} does not match actual shape of {1,1,1,1,320,640} for output disp5 Graph Domain TO version : 18******* In TIDL_subgraphRtInvoke ******** Layer, Layer Cycles,kernelOnlyCycles, coreLoopCycles,LayerSetupCycles,dmaPipeupCycles, dmaPipeDownCycles, PrefetchCycles,copyKerCoeffCycles,LayerDeinitCycles,LastBlockCycles, paddingTrigger, paddingWait,LayerWithoutPad,LayerHandleCopy, BackupCycles, RestoreCycles,Multic7xContextCopyCycles, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 4, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 5, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 6, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 7, 0, 0, 0, 0, 0, 0, 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0, 0, 0, 473, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 474, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 475, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 476, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 477, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, Sum of Layer Cycles 0 Sub Graph Stats 172.000000 6848794.000000 4555.000000 ******* TIDL_subgraphRtInvoke done ******** ********** Frame Index 10 : Running fixed point mode for calibration ********** In TIDL_runtimesPostProcessNet In TIDL_runtimesPostProcessNet 1 In TIDL_runtimesPostProcessNet 2 In TIDL_runtimesPostProcessNet 3 Asymmetric quantization with calib = 4 Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 7141.38 .... ..... ... .... ..... # 1 . .. T 7098.08 .... ..... ... .... ..... # 2 . .. T 7067.12 .... ..... ... .... ..... # 3 . .. T 7057.97 .... ..... ... .... ..... # 4 . .. T 7069.30 .... ..... ... .... ..... # 5 . .. T 7132.66 .... ..... ... .... ..... # 6 . .. T 7106.76 .... ..... ... .... ..... # 7 . .. T 7099.86 .... ..... ... .... ..... # 8 . .. T 7091.28 .... ..... ... .... ..... # 9 . .. T 7107.83 .... ..... ... .... ..... ***************** Calibration iteration number 0 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 5989.04 .... ..... ... .... ..... # 1 . .. T 5920.81 .... ..... ... .... ..... # 2 . .. T 5914.35 .... ..... ... .... ..... # 3 . .. T 5893.01 .... ..... ... .... ..... # 4 . .. T 5891.28 .... ..... ... .... ..... # 5 . .. T 5925.04 .... ..... ... .... ..... # 6 . .. T 5927.43 .... ..... ... .... ..... # 7 . .. T 5924.21 .... ..... ... .... ..... # 8 . .. T 5942.31 .... ..... ... .... ..... # 9 . .. T 6249.08 .... ..... ... .... ..... ***************** Calibration iteration number 0 completed ************************ ***************** Calibration iteration number 1 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6268.47 .... ..... ... .... ..... # 1 . .. T 6246.01 .... ..... ... .... ..... # 2 . .. T 6160.83 .... ..... ... .... ..... # 3 . .. T 5906.09 .... ..... ... .... ..... # 4 . .. T 5939.74 .... ..... ... .... ..... # 5 . .. T 5925.67 .... ..... ... .... ..... # 6 . .. T 5900.87 .... ..... ... .... ..... # 7 . .. T 5901.88 .... ..... ... .... ..... # 8 . .. T 5923.11 .... ..... ... .... ..... # 9 . .. T 5872.70 .... ..... ... .... ..... ***************** Calibration iteration number 1 completed ************************ ***************** Calibration iteration number 2 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 5961.74 .... ..... ... .... ..... # 1 . .. T 5935.91 .... ..... ... .... ..... # 2 . .. T 5920.73 .... ..... ... .... ..... # 3 . .. T 5930.30 .... ..... ... .... ..... # 4 . .. T 5922.48 .... ..... ... .... ..... # 5 . .. T 5965.28 .... ..... ... .... ..... # 6 . .. T 6082.47 .... ..... ... .... ..... # 7 . .. T 6012.11 .... ..... ... .... ..... # 8 . .. T 5948.92 .... ..... ... .... ..... # 9 . .. T 5913.46 .... ..... ... .... ..... ***************** Calibration iteration number 2 completed ************************ ***************** Calibration iteration number 3 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 5951.33 .... ..... ... .... ..... # 1 . .. T 6005.36 .... ..... ... .... ..... # 2 . .. T 5977.97 .... ..... ... .... ..... # 3 . .. T 5969.38 .... ..... ... .... ..... # 4 . .. T 5958.69 .... ..... ... .... ..... # 5 . .. T 6034.97 .... ..... ... .... ..... # 6 . .. T 5952.91 .... ..... ... .... ..... # 7 . .. T 6000.90 .... ..... ... .... ..... # 8 . .. T 6066.59 .... ..... ... .... ..... # 9 . .. T 6407.27 .... ..... ... .... ..... ***************** Calibration iteration number 3 completed ************************ ***************** Calibration iteration number 4 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6267.60 .... ..... ... .... ..... # 1 . .. T 6291.55 .... ..... ... .... ..... # 2 . .. T 6327.60 .... ..... ... .... ..... # 3 . .. T 6059.12 .... ..... ... .... ..... # 4 . .. T 6056.58 .... ..... ... .... ..... # 5 . .. T 5991.50 .... ..... ... .... ..... # 6 . .. T 6005.53 .... ..... ... .... ..... # 7 . .. T 6008.02 .... ..... ... .... ..... # 8 . .. T 6011.58 .... ..... ... .... ..... # 9 . .. T 5995.36 .... ..... ... .... ..... ***************** Calibration iteration number 4 completed ************************ ***************** Calibration iteration number 5 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6058.13 .... ..... ... .... ..... # 1 . .. T 5972.86 .... ..... ... .... ..... # 2 . .. T 6013.09 .... ..... ... .... ..... # 3 . .. T 6030.13 .... ..... ... .... ..... # 4 . .. T 6162.44 .... ..... ... .... ..... # 5 . .. T 6011.43 .... ..... ... .... ..... # 6 . .. T 5974.84 .... ..... ... .... ..... # 7 . .. T 5997.09 .... ..... ... .... ..... # 8 . .. T 6008.67 .... ..... ... .... ..... # 9 . .. T 6033.37 .... ..... ... .... ..... ***************** Calibration iteration number 5 completed ************************ ***************** Calibration iteration number 6 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6053.91 .... ..... ... .... ..... # 1 . .. T 6028.97 .... ..... ... .... ..... # 2 . .. T 6053.35 .... ..... ... .... ..... # 3 . .. T 5996.83 .... ..... ... .... ..... # 4 . .. T 5963.23 .... ..... ... .... ..... # 5 . .. T 6002.69 .... ..... ... .... ..... # 6 . .. T 6006.80 .... ..... ... .... ..... # 7 . .. T 6015.66 .... ..... ... .... ..... # 8 . .. T 6539.75 .... ..... ... .... ..... # 9 . .. T 6329.98 .... ..... ... .... ..... ***************** Calibration iteration number 6 completed ************************ ***************** Calibration iteration number 7 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6261.47 .... ..... ... .... ..... # 1 . .. T 6407.02 .... ..... ... .... ..... # 2 . .. T 6119.52 .... ..... ... .... ..... # 3 . .. T 6045.94 .... ..... ... .... ..... # 4 . .. T 6047.47 .... ..... ... .... ..... # 5 . .. T 6017.62 .... ..... ... .... ..... # 6 . .. T 5984.85 .... ..... ... .... ..... # 7 . .. T 5971.51 .... ..... ... .... ..... # 8 . .. T 6081.76 .... ..... ... .... ..... # 9 . .. T 6068.00 .... ..... ... .... ..... ***************** Calibration iteration number 7 completed ************************ ***************** Calibration iteration number 8 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6018.40 .... ..... ... .... ..... # 1 . .. T 6030.84 .... ..... ... .... ..... # 2 . .. T 6036.82 .... ..... ... .... ..... # 3 . .. T 5979.01 .... ..... ... .... ..... # 4 . .. T 6020.42 .... ..... ... .... ..... # 5 . .. T 5941.23 .... ..... ... .... ..... # 6 . .. T 5974.93 .... ..... ... .... ..... # 7 . .. T 5934.80 .... ..... ... .... ..... # 8 . .. T 5931.17 .... ..... ... .... ..... # 9 . .. T 5941.84 .... ..... ... .... ..... ***************** Calibration iteration number 8 completed ************************ ***************** Calibration iteration number 9 started ************************ Empty prototxt path, running calibration ~~~~~Running TIDL in PC emulation mode to collect Activations range for each layer~~~~~ Processing config file #0 : /home/root/metoak-demo/out/model-artifacts/metoak-mostereonet-aanet-singlergb-2/tempDir/disp5_tidl_io_.qunat_stats_config.txt Freeing memory for user provided Net ----------------------- TIDL Process with REF_ONLY FLOW ------------------------ # 0 . .. T 6050.38 .... ..... ... .... ..... # 1 . .. T 6012.49 .... ..... ... .... ..... # 2 . .. T 5991.10 .... ..... ... .... ..... # 3 . .. T 6034.15 .... ..... ... .... ..... # 4 . .. T 6042.46 .... ..... ... .... ..... # 5 . .. T 5962.56 .... ..... ... .... ..... # 6 . .. T 5938.11 .... ..... ... .... ..... # 7 . .. T 5989.73 .... ..... ... .... ..... # 8 . .. T 6409.63 .... ..... ... .... ..... # 9 . .. T 6592.99 .... ..... ... .... ..... ***************** Calibration iteration number 9 completed ************************ Empty prototxt path, running calibration ------------------ Network Compiler Traces ----------------------------- NC running for device: 1 successful Memory allocation successful Workload Creation Rerunning network compiler ------------------ Network Compiler Traces ----------------------------- NC running for device: 1 successful Memory allocation successful Workload Creation SUGGESTION: [TIDL_BatchNormLayer] /Mul 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_0/down_0.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_1/down_1.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_1/down_1.3_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_2/down_2.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_2/down_2.3_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_3/down_3.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_3/down_3.3_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.3_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.5_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.7_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_3/up_conv/up_conv.0_1/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/up_conv/up_conv.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/merge_conv/merge_conv.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/merge_conv/merge_conv.3_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/merge_conv/merge_conv.5_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_2/up_conv/up_conv.0_1/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/up_conv/up_conv.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/merge_conv/merge_conv.1_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/merge_conv/merge_conv.3_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/merge_conv/merge_conv.5_1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_0/down_0.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_1/down_1.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_1/down_1.3/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_2/down_2.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_2/down_2.3/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_3/down_3.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_3/down_3.3/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.3/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.5/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/down_4/down_4.7/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_3/up_conv/up_conv.0/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/up_conv/up_conv.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/merge_conv/merge_conv.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/merge_conv/merge_conv.3/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_3/merge_conv/merge_conv.5/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_Deconv2DLayer] /model/feature_extractor/up_2/up_conv/up_conv.0/ConvTranspose Please change to Upsample/Resize if possible. Upsample/Resize will be more efficient. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/up_conv/up_conv.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/merge_conv/merge_conv.1/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/merge_conv/merge_conv.3/LeakyRelu 16 bits is not optimal in this release. SUGGESTION: [TIDL_BatchNormLayer] /model/feature_extractor/up_2/merge_conv/merge_conv.5/LeakyRelu 16 bits is not optimal in this release. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.0/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.1/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.0/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.0/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.1/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.1/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.2/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.3/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.2/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.2/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.3/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.3/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.4/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.5/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.4/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.4/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.5/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.5/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.6/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.6/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.6/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.7/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.8/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.7/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.7/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.8/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.8/Resize_2 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.9/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/aggregation/fusions.9/Resize_1 Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. INFORMATION: [TIDL_ResizeLayer] /model/refinement.0/Resize Any resize ratio which is power of 2 and greater than 4 will be placed by combination of 4x4 resize layer and 2x2 resize layer. For example a 8x8 resize will be replaced by 4x4 resize followed by 2x2 resize. **************************************************** ** 73 WARNINGS 0 ERRORS ** **************************************************** In TIDL_runtimesPostProcessNet 4 onnx infer time: 704544.055268 Save prediction: /home/root/metoak-demo/calib_images_rgb_predictions/0.122552@1697509405_159561.png Completed_Model: 1, Name: metoak-mostereonet-aanet-singlergb-2 , Total time: 76821.18, Offload Time: 6916.72 , DDR RW MBs: 0 ************ in TIDL_subgraphRtDelete ************ MEM: Deinit ... !!! MEM: Alloc's: 25 alloc's of 359879601 bytes MEM: Free's : 25 free's of 359879601 bytes MEM: Open's : 0 allocs of 0 bytes MEM: Deinit ... Done !!!