WXinlong / SOLO

SOLO and SOLOv2 for instance segmentation, ECCV 2020 & NeurIPS 2020.
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instance-segmentation object-detection pytorch solo solov2

SOLO: Segmenting Objects by Locations

This project hosts the code for implementing the SOLO algorithms for instance segmentation.

SOLO: Segmenting Objects by Locations,
Xinlong Wang, Tao Kong, Chunhua Shen, Yuning Jiang, Lei Li
In: Proc. European Conference on Computer Vision (ECCV), 2020
arXiv preprint (arXiv 1912.04488)

SOLOv2: Dynamic and Fast Instance Segmentation,
Xinlong Wang, Rufeng Zhang, Tao Kong, Lei Li, Chunhua Shen
In: Proc. Advances in Neural Information Processing Systems (NeurIPS), 2020
arXiv preprint (arXiv 2003.10152)

highlights

Highlights

Updates

Installation

This implementation is based on mmdetection(v1.0.0). Please refer to INSTALL.md for installation and dataset preparation.

Models

For your convenience, we provide the following trained models on COCO (more models are coming soon). If you need the models in PaddlePaddle framework, please refer to paddlepaddle/README.md.

Model Multi-scale training Testing time / im AP (minival) Link
SOLO_R50_1x No 77ms 32.9 download
SOLO_R50_3x Yes 77ms 35.8 download
SOLO_R101_3x Yes 86ms 37.1 download
Decoupled_SOLO_R50_1x No 85ms 33.9 download
Decoupled_SOLO_R50_3x Yes 85ms 36.4 download
Decoupled_SOLO_R101_3x Yes 92ms 37.9 download
SOLOv2_R50_1x No 54ms 34.8 download
SOLOv2_R50_3x Yes 54ms 37.5 download
SOLOv2_R101_3x Yes 66ms 39.1 download
SOLOv2_R101_DCN_3x Yes 97ms 41.4 download
SOLOv2_X101_DCN_3x Yes 169ms 42.4 download

Light-weight models:

Model Multi-scale training Testing time / im AP (minival) Link
Decoupled_SOLO_Light_R50_3x Yes 29ms 33.0 download
Decoupled_SOLO_Light_DCN_R50_3x Yes 36ms 35.0 download
SOLOv2_Light_448_R18_3x Yes 19ms 29.6 download
SOLOv2_Light_448_R34_3x Yes 20ms 32.0 download
SOLOv2_Light_448_R50_3x Yes 24ms 33.7 download
SOLOv2_Light_512_DCN_R50_3x Yes 34ms 36.4 download

Disclaimer:

Usage

A quick demo

Once the installation is done, you can download the provided models and use inference_demo.py to run a quick demo.

Train with multiple GPUs

./tools/dist_train.sh ${CONFIG_FILE} ${GPU_NUM}

Example: 
./tools/dist_train.sh configs/solo/solo_r50_fpn_8gpu_1x.py  8

Train with single GPU

python tools/train.py ${CONFIG_FILE}

Example:
python tools/train.py configs/solo/solo_r50_fpn_8gpu_1x.py

Testing

# multi-gpu testing
./tools/dist_test.sh ${CONFIG_FILE} ${CHECKPOINT_FILE} ${GPU_NUM}  --show --out  ${OUTPUT_FILE} --eval segm

Example: 
./tools/dist_test.sh configs/solo/solo_r50_fpn_8gpu_1x.py SOLO_R50_1x.pth  8  --show --out results_solo.pkl --eval segm

# single-gpu testing
python tools/test_ins.py ${CONFIG_FILE} ${CHECKPOINT_FILE} --show --out  ${OUTPUT_FILE} --eval segm

Example: 
python tools/test_ins.py configs/solo/solo_r50_fpn_8gpu_1x.py  SOLO_R50_1x.pth --show --out  results_solo.pkl --eval segm

Visualization

python tools/test_ins_vis.py ${CONFIG_FILE} ${CHECKPOINT_FILE} --show --save_dir  ${SAVE_DIR}

Example: 
python tools/test_ins_vis.py configs/solo/solo_r50_fpn_8gpu_1x.py  SOLO_R50_1x.pth --show --save_dir  work_dirs/vis_solo

Contributing to the project

Any pull requests or issues are welcome.

Citations

Please consider citing our papers in your publications if the project helps your research. BibTeX reference is as follows.

@inproceedings{wang2020solo,
  title     =  {{SOLO}: Segmenting Objects by Locations},
  author    =  {Wang, Xinlong and Kong, Tao and Shen, Chunhua and Jiang, Yuning and Li, Lei},
  booktitle =  {Proc. Eur. Conf. Computer Vision (ECCV)},
  year      =  {2020}
}
@article{wang2020solov2,
  title={SOLOv2: Dynamic and Fast Instance Segmentation},
  author={Wang, Xinlong and Zhang, Rufeng and  Kong, Tao and Li, Lei and Shen, Chunhua},
  journal={Proc. Advances in Neural Information Processing Systems (NeurIPS)},
  year={2020}
}

License

For academic use, this project is licensed under the 2-clause BSD License - see the LICENSE file for details. For commercial use, please contact Xinlong Wang and Chunhua Shen.