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yolov5-tensorrt

A tensorrt implementation of yolov5: https://github.com/ultralytics/yolov5

requirement

Please use torch>=1.6.0 + onnx>=1.6.0 + TRT 7.1+ (fix upsample issue) to run the sample code
onnx-simplifier-0.2.16

The code

Add newly implemented upsample to get this working with current combination of onnx and tensorrt.
0. prepare above mentioned environment.

  1. git clone && git submodule update --init
  2. download weights file (use yolov5/models/export.py)
  3. python main.py to run the benchmark
  4. Generally, for image of size 640*640, using batchsize=1, the speedup is 4x on V100.

Updates

  • 20201004 update to track yolov5 - v3.0 release. download model file from official websites please.

TODO

  • NMS support
  • dynamic shape or dynamic batchsize support (won't implement soon because onnx-simplifier only supports fixed shape)
  • FP16 numerical issue and performance investigation
  • Benchmark

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A tensorrt implementation of yolov5: https://github.com/ultralytics/yolov5

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