NVIDIA
NVIDIA
VehicleMakeNet
Model
NVIDIA
NVIDIA
VehicleMakeNet

Resnet18 model to classify a car crop into 1 out 20 car brands.

5 Versions
pruned_onnx_v1.1.0Signed
09/20/2024 1:06 AM UTC7.07 MB
11/02/2023 10:27 PM UTC16.45 MBAccuracy: 9180 Epochs
10/26/2021 4:03 PM UTC16.45 MBAccuracy: 9180 EpochsBatch Size: 1GPU: V100
1. MODEL OVERVIEW
KeyValue
1. DescriptionCLASSIFIES CARS BY MAKE
2. Model ArchitectureCONVOLUTION NEURAL NETWORK (CNN); Classification model with Resnet18 backbone
3. InputTYPE: RED, GREEN, BLUE (RGB) IMAGE; DIMENSION: 2D; SENSOR: RGB CAMERA; RESOLUTION(S): 224X224X3
4. OutputTYPE: LABEL; DIMENSION: 2D; RESOLUTION(S): 1X20
5. RUNTIME(S)DEEPSTREAM
6. Supported OSLINUX, LINUX 4 TEGRA
7. Supported HardwareALL NVIDIA GPUS INCLUDING JETSON DEVICES
2. TRAINING & EVALUATION
KeyValue
1. TRAINING FRAMEWORKKERAS AND TENSORFLOW
2. TRAINING ARITHMETIC PRECISIONFP32
3. TRAINING DATASETPROPRIETARY
4. TRAINING DATASET PROPERTIES60,000 IMAGES; IMAGES OF VEHICLES; CONTAINS CAR CROPS FROM A MIX OF CAMERA HEIGHTS, CAMERA ANGLES, FIELD-OF VIEW (FOV) AND OCCLUSIONS.
5. TRAINING DATASET LICENSECOVERED BY MODEL END USER LICENSE AGREEMENT (EULA)
6. TRAINING KPI(S)CATEGORICAL CROSS ENTROPY
7. EVALUATION DATASETPROPRIETARY
8. EVALUATION DATASET PROPERTIES2,000 IMAGES ACROSS A VARIETY OF ENVIRONMENTS, OCCLUSION CONDITIONS, CAMERA HEIGHTS AND CAMERA ANGLES.
9. EVALUATION DATASET LICENSECOVERED BY MODEL END USER LICENSE AGREEMENT (EULA)
3. INFERENCE/PERFORMANCE
KeyValue
1. ENGINE(S)TENSORRT (TRT)
2. TEST HARDWAREAGX XAVIER, NANO, T4, XAVIER NX
3. ARITHMETIC PRECISIONAGX XAVIER: INT8, NANO: FP16, T4: INT8, XAVIER NX: INT8
4. INFERENCE PERFORMANCEFrame Rate (Batch size =1): AGX XAVIER: 5746 FPS, NANO: 120 FPS, T4: 15743 FPS, XAVIER NX: 2689 FPS
5. KPI(S)ACCURACY: 91
pruned_v1.0Selected
08/18/2021 8:10 PM UTC16.45 MBAccuracy: 9180 EpochsBatch Size: 1GPU: V100
1. MODEL OVERVIEW
KeyValue
1. DescriptionCLASSIFIES CARS BY MAKE
2. Model ArchitectureCONVOLUTION NEURAL NETWORK (CNN); Classification model with Resnet18 backbone
3. InputTYPE: RED, GREEN, BLUE (RGB) IMAGE; DIMENSION: 2D; SENSOR: RGB CAMERA; RESOLUTION(S): 224X224X3
4. OutputTYPE: LABEL; DIMENSION: 2D; RESOLUTION(S): 1X20
5. RUNTIME(S)DEEPSTREAM
6. Supported OSLINUX, LINUX 4 TEGRA
7. Supported HardwareALL NVIDIA GPUS INCLUDING JETSON DEVICES
2. TRAINING & EVALUATION
KeyValue
1. TRAINING FRAMEWORKKERAS AND TENSORFLOW
2. TRAINING ARITHMETIC PRECISIONFP32
3. TRAINING DATASETPROPRIETARY
4. TRAINING DATASET PROPERTIES60,000 IMAGES; IMAGES OF VEHICLES; CONTAINS CAR CROPS FROM A MIX OF CAMERA HEIGHTS, CAMERA ANGLES, FIELD-OF VIEW (FOV) AND OCCLUSIONS.
5. TRAINING DATASET LICENSECOVERED BY MODEL END USER LICENSE AGREEMENT (EULA)
6. TRAINING KPI(S)CATEGORICAL CROSS ENTROPY
7. EVALUATION DATASETPROPRIETARY
8. EVALUATION DATASET PROPERTIES2,000 IMAGES ACROSS A VARIETY OF ENVIRONMENTS, OCCLUSION CONDITIONS, CAMERA HEIGHTS AND CAMERA ANGLES.
9. EVALUATION DATASET LICENSECOVERED BY MODEL END USER LICENSE AGREEMENT (EULA)
3. INFERENCE/PERFORMANCE
KeyValue
1. ENGINE(S)TENSORRT (TRT)
2. TEST HARDWAREAGX XAVIER, NANO, T4, XAVIER NX
3. ARITHMETIC PRECISIONAGX XAVIER: INT8, NANO: FP16, T4: INT8, XAVIER NX: INT8
4. INFERENCE PERFORMANCEFrame Rate (Batch size =1): AGX XAVIER: 5746 FPS, NANO: 120 FPS, T4: 15743 FPS, XAVIER NX: 2689 FPS
5. KPI(S)ACCURACY: 91
08/18/2021 8:10 PM UTC132.46 MBAccuracy: 9180 EpochsBatch Size: 1GPU: V100
1. MODEL OVERVIEW
KeyValue
1. DescriptionCLASSIFIES CARS BY MAKE
2. Model ArchitectureCONVOLUTION NEURAL NETWORK (CNN); Classification model with Resnet18 backbone
3. InputTYPE: RED, GREEN, BLUE (RGB) IMAGE; DIMENSION: 2D; SENSOR: RGB CAMERA; RESOLUTION(S): 224X224X3
4. OutputTYPE: LABEL; DIMENSION: 2D; RESOLUTION(S): 1X20
5. RUNTIME(S)DEEPSTREAM
6. Supported OSLINUX, LINUX 4 TEGRA
7. Supported HardwareALL NVIDIA GPUS INCLUDING JETSON DEVICES
2. TRAINING & EVALUATION
KeyValue
1. TRAINING FRAMEWORKKERAS AND TENSORFLOW
2. TRAINING ARITHMETIC PRECISIONFP32
3. TRAINING DATASETPROPRIETARY
4. TRAINING DATASET PROPERTIES60,000 IMAGES; IMAGES OF VEHICLES; CONTAINS CAR CROPS FROM A MIX OF CAMERA HEIGHTS, CAMERA ANGLES, FIELD-OF VIEW (FOV) AND OCCLUSIONS.
5. TRAINING DATASET LICENSECOVERED BY MODEL END USER LICENSE AGREEMENT (EULA)
6. TRAINING KPI(S)CATEGORICAL CROSS ENTROPY
7. EVALUATION DATASETPROPRIETARY
8. EVALUATION DATASET PROPERTIES2,000 IMAGES ACROSS A VARIETY OF ENVIRONMENTS, OCCLUSION CONDITIONS, CAMERA HEIGHTS AND CAMERA ANGLES.
9. EVALUATION DATASET LICENSECOVERED BY MODEL END USER LICENSE AGREEMENT (EULA)
3. INFERENCE/PERFORMANCE
KeyValue
1. ENGINE(S)TENSORRT (TRT)
2. TEST HARDWAREAGX XAVIER, NANO, T4, XAVIER NX
3. ARITHMETIC PRECISIONAGX XAVIER: INT8, NANO: FP16, T4: INT8, XAVIER NX: INT8
4. INFERENCE PERFORMANCEFrame Rate (Batch size =1): AGX XAVIER: 5746 FPS, NANO: 120 FPS, T4: 15743 FPS, XAVIER NX: 2689 FPS
5. KPI(S)ACCURACY: 91

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