Convert openmmlab (not only mmdetection) series model to tensorrt

Related tags

Deep Learningmm2trt
Overview

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 TensorRT7.2.2 pytorch1.8 cuda11.1
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 tensorrt7.2.2 pytorch1.6 cuda10.2
sudo docker build -t mmdet2trt_docker:v1.0 --build-arg TORCH_VERSION=1.6.0 --build-arg TORCHVISION_VERSION=0.7.0 --build-arg CUDA=10.2 --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
  • YOLOX

Tested on:

  • torch=1.8.1
  • tensorrt=8.0.1.6
  • mmdetection=2.18.0
  • 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

And send your resume to my e-mail if you want to join @OpenMMLab. Please read the JD for detail: link

Owner
JinTian
You know who I am.
JinTian
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