AdelaiDet is an open source toolbox for multiple instance-level recognition tasks on top of Detectron2. All instance-level recognition works from our group are open-sourced here.
To date, AdelaiDet implements the following algorithms:
- FCOS
- BlendMask
- MEInst
- ABCNet
- SOLO to be released (mmdet version)
- SOLOv2 to be released (mmdet version)
- DirectPose to be released
- CondInst to be released
COCO Object Detecton Baselines with FCOS
Name | inf. time | box AP | download |
---|---|---|---|
FCOS_R_50_1x | 16 FPS | 38.7 | model |
FCOS_MS_R_101_2x | 12 FPS | 43.1 | model |
FCOS_MS_X_101_32x8d_2x | 6.6 FPS | 43.9 | model |
FCOS_MS_X_101_32x8d_dcnv2_2x | 4.6 FPS | 46.6 | model |
FCOS_RT_MS_DLA_34_4x_shtw | 52 FPS | 39.1 | model |
More models can be found in FCOS README.md.
COCO Instance Segmentation Baselines with BlendMask
Model | Name | inf. time | box AP | mask AP | download |
---|---|---|---|---|---|
Mask R-CNN | R_101_3x | 10 FPS | 42.9 | 38.6 | |
BlendMask | R_101_3x | 11 FPS | 44.8 | 39.5 | model |
BlendMask | R_101_dcni3_5x | 10 FPS | 46.8 | 41.1 | model |
For more models and information, please refer to BlendMask README.md.
COCO Instance Segmentation Baselines with MEInst
Name | inf. time | box AP | mask AP | download |
---|---|---|---|---|
MEInst_R_50_3x | 12 FPS | 43.6 | 34.5 | model |
For more models and information, please refer to MEInst README.md.
Total_Text results with ABCNet
Name | inf. time | e2e-hmean | det-hmean | download |
---|---|---|---|---|
attn_R_50 | 11 FPS | 63.0 | 82.8 | model |
For more models and information, please refer to ABCNet README.md.
Note that:
- Inference time for all projects is measured on a NVIDIA 1080Ti with batch size 1.
- APs are evaluated on COCO2017 val split unless specified.
First install Detectron2 following the official guide: INSTALL.md. Then build AdelaiDet with:
git clone https://github.com/aim-uofa/AdelaiDet.git
cd AdelaiDet
python setup.py build develop
Some projects may require special setup, please follow their own README.md
in configs.
- Pick a model and its config file, for example,
fcos_R_50_1x.yaml
. - Download the model
wget https://cloudstor.aarnet.edu.au/plus/s/glqFc13cCoEyHYy/download -O fcos_R_50_1x.pth
- Run the demo with
python demo/demo.py \
--config-file configs/FCOS-Detection/R_50_1x.yaml \
--input input1.jpg input2.jpg \
--opts MODEL.WEIGHTS fcos_R_50_1x.pth
To train a model with "train_net.py", first setup the corresponding datasets following datasets/README.md, then run:
OMP_NUM_THREADS=1 python tools/train_net.py \
--config-file configs/FCOS-Detection/R_50_1x.yaml \
--num-gpus 8 \
OUTPUT_DIR training_dir/fcos_R_50_1x
To evaluate the model after training, run:
OMP_NUM_THREADS=1 python tools/train_net.py \
--config-file configs/FCOS-Detection/R_50_1x.yaml \
--eval-only \
--num-gpus 8 \
OUTPUT_DIR training_dir/fcos_R_50_1x \
MODEL.WEIGHTS training_dir/fcos_R_50_1x/model_final.pth
Note that:
- The configs are made for 8-GPU training. To train on another number of GPUs, change the
--num-gpus
. - If you want to measure the inference time, please change
--num-gpus
to 1. - We set
OMP_NUM_THREADS=1
by default, which achieves the best speed on our machines, please change it as needed. - This quick start is made for FCOS. If you are using other projects, please check the projects' own
README.md
in configs.
If you use this toolbox in your research or wish to refer to the baseline results, please use the following BibTeX entries.
@inproceedings{tian2019fcos,
title = {{FCOS}: Fully Convolutional One-Stage Object Detection},
author = {Tian, Zhi and Shen, Chunhua and Chen, Hao and He, Tong},
booktitle = {Proc. Int. Conf. Computer Vision (ICCV)},
year = {2019}
}
@inproceedings{chen2020blendmask,
title = {{BlendMask}: Top-Down Meets Bottom-Up for Instance Segmentation},
author = {Chen, Hao and Sun, Kunyang and Tian, Zhi and Shen, Chunhua and Huang, Yongming and Yan, Youliang},
booktitle = {Proc. IEEE Conf. Computer Vision and Pattern Recognition (CVPR)},
year = {2020}
}
@inproceedings{zhang2020MEInst,
title = {Mask Encoding for Single Shot Instance Segmentation},
author = {Zhang, Rufeng and Tian, Zhi and Shen, Chunhua and You, Mingyu and Yan, Youliang},
booktitle = {Proc. IEEE Conf. Computer Vision and Pattern Recognition (CVPR)},
year = {2020}
}
@inproceedings{liu2020abcnet,
title = {{ABCNet}: Real-time Scene Text Spotting with Adaptive Bezier-Curve Network},
author = {Liu, Yuliang and Chen, Hao and Shen, Chunhua and He, Tong and Jin, Lianwen and Wang, Liangwei},
booktitle = {Proc. IEEE Conf. Computer Vision and Pattern Recognition (CVPR)},
year = {2020}
}
@article{wang2019solo,
title = {{SOLO}: Segmenting Objects by Locations},
author = {Wang, Xinlong and Kong, Tao and Shen, Chunhua and Jiang, Yuning and Li, Lei},
journal = {arXiv preprint arXiv:1912.04488},
year = {2019}
}
@article{wang2020solov2,
title = {{SOLOv2}: Dynamic, Faster and Stronger},
author = {Wang, Xinlong and Zhang, Rufeng and Kong, Tao and Li, Lei and Shen, Chunhua},
journal = {arXiv preprint arXiv:2003.10152},
year = {2020}
}
@article{tian2019directpose,
title = {{DirectPose}: Direct End-to-End Multi-Person Pose Estimation},
author = {Tian, Zhi and Chen, Hao and Shen, Chunhua},
journal = {arXiv preprint arXiv:1911.07451},
year = {2019}
}
@article{tian2020conditional,
title = {Conditional Convolutions for Instance Segmentation},
author = {Tian, Zhi and Shen, Chunhua and Chen, Hao},
journal = {arXiv preprint arXiv:2003.05664},
year = {2020}
}
For academic use, this project is licensed under the 2-clause BSD License - see the LICENSE file for details. For commercial use, please contact Chunhua Shen.