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convert mmdetection model to tensorrt, support fp16, int8, batch input, dynamic shape etc.

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grimoire/mmdetection-to-tensorrt

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MMDet to TensorRT

This project aims to convert the mmdetection model to TensorRT model end2end. Focus on object detection for now. Mask support is experiment.

support:

  • fp16
  • int8(experiment)
  • batched input
  • dynamic input shape
  • combination of different modules
  • deepstream support

Any advices, bug reports and stars are welcome.

License

This project is released under the Apache 2.0 license.

Requirement

  • install mmdetection:

    # mim is so cool!
    pip install openmim
    mim install mmdet==2.14.0
  • install torch2trt_dynamic:

    git clone https://github.com/grimoire/torch2trt_dynamic.git torch2trt_dynamic
    cd torch2trt_dynamic
    python setup.py develop
  • install amirstan_plugin:

    • Install tensorrt: TensorRT

    • clone repo and build plugin

      git clone --depth=1 https://github.com/grimoire/amirstan_plugin.git
      cd amirstan_plugin
      git submodule update --init --progress --depth=1
      mkdir build
      cd build
      cmake -DTENSORRT_DIR=${TENSORRT_DIR} ..
      make -j10
    • DON'T FORGET setting the envoirment variable(in ~/.bashrc):

      export AMIRSTAN_LIBRARY_PATH=${amirstan_plugin_root}/build/lib

Installation

Host

git clone https://github.com/grimoire/mmdetection-to-tensorrt.git
cd mmdetection-to-tensorrt
python setup.py develop

Docker

Build docker image

# cuda11.1 TensorRT7.1 pytorch1.6
sudo docker build -t mmdet2trt_docker:v1.0 docker/

You can also specify CUDA, Pytorch and Torchvision versions with docker build args by:

# cuda11.1 tensorrt7.1 pytorch1.6
sudo docker build -t mmdet2trt_docker:v1.0 --build-arg TORCH_VERSION=1.6.0 --build-arg TORCHVISION_VERSION=0.7.0 --docker/

Run (will show the help for the CLI entrypoint)

sudo docker run --gpus all -it --rm -v ${your_data_path}:${bind_path} mmdet2trt_docker:v1.0

Or if you want to open a terminal inside de container:

sudo docker run --gpus all -it --rm -v ${your_data_path}:${bind_path} --entrypoint bash mmdet2trt_docker:v1.0

Example conversion:

sudo docker run --gpus all -it --rm -v ${your_data_path}:${bind_path} mmdet2trt_docker:v1.0 ${bind_path}/config.py ${bind_path}/checkpoint.pth ${bind_path}/output.trt

Usage

how to create a TensorRT model from mmdet model (converting might take few minutes)(Might have some warning when converting.) detail can be found in getting_started.md

CLI

mmdet2trt ${CONFIG_PATH} ${CHECKPOINT_PATH} ${OUTPUT_PATH}

Run mmdet2trt -h for help on optional arguments.

Python

opt_shape_param=[
    [
        [1,3,320,320],      # min shape
        [1,3,800,1344],     # optimize shape
        [1,3,1344,1344],    # max shape
    ]
]
max_workspace_size=1<<30    # some module and tactic need large workspace.
trt_model = mmdet2trt(cfg_path, weight_path, opt_shape_param=opt_shape_param, fp16_mode=True, max_workspace_size=max_workspace_size)

# save converted model
torch.save(trt_model.state_dict(), save_model_path)

# save engine if you want to use it in c++ api
with open(save_engine_path, mode='wb') as f:
    f.write(trt_model.state_dict()['engine'])

Note:

  • The input of the engine is the tensor after preprocess.
  • The output of the engine is num_dets, bboxes, scores, class_ids. if you enable the enable_mask flag, there will be another output mask.
  • The bboxes output of the engine did not divided by scale factor.

how to use the converted model

from mmdet.apis import inference_detector
from mmdet2trt.apis import create_wrap_detector

# create wrap detector
trt_detector = create_wrap_detector(trt_model, cfg_path, device_id)

# result share same format as mmdetection
result = inference_detector(trt_detector, image_path)

# visualize
trt_detector.show_result(
    image_path,
    result,
    score_thr=score_thr,
    win_name='mmdet2trt',
    show=True)

Try demo in demo/inference.py, or demo/cpp if you want to do inference with c++ api.

Read getting_started.md for more details.

How does it works?

Most other project use pytorch=>ONNX=>tensorRT route, This repo convert pytorch=>tensorRT directly, avoid unnecessary ONNX IR. Read how-does-it-work for detail.

Support Model/Module

  • Faster R-CNN
  • Cascade R-CNN
  • Double-Head R-CNN
  • Group Normalization
  • Weight Standardization
  • DCN
  • SSD
  • RetinaNet
  • Libra R-CNN
  • FCOS
  • Fovea
  • CARAFE
  • FreeAnchor
  • RepPoints
  • NAS-FPN
  • ATSS
  • PAFPN
  • FSAF
  • GCNet
  • Guided Anchoring
  • Generalized Attention
  • Dynamic R-CNN
  • Hybrid Task Cascade
  • DetectoRS
  • Side-Aware Boundary Localization
  • YOLOv3
  • PAA
  • CornerNet(WIP)
  • Generalized Focal Loss
  • Grid RCNN
  • VFNet
  • GROIE
  • Mask R-CNN(experiment)
  • Cascade Mask R-CNN(experiment)
  • Cascade RPN
  • DETR

Tested on:

  • torch=1.8.1
  • tensorrt=8.0.1.6
  • mmdetection=2.14.0
  • cuda=11.1

If you find any error, please report it in the issue.

FAQ

read this page if you meet any problem.

Contact

This repo is maintained by @grimoire

Discuss group: QQ:1107959378