QueryInst
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[ICCV 2021] Instances as Queries
Instances as Queries
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[News]
Apr, 2022: If you likeQueryInstfor instance segmentation, you might also likeTeViT(CVPR 2022, oral, paper / code & models) for high-performance video instance segmentation!.Oct, 2021:QueryInst (ICCV 2021)is now officially included bymmdetectionlibrary, with new checkpoints, corresponding logs, and augmented training settings. We suggest you to use the newestQueryInstimplementation inmmdetection, meanwhile this repo will be maintained too. Issues are welcomed if you have problems usingQueryInstto reproduce the COCO AP reported in our paper.
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TL;DR: QueryInst (Instances as Queries) is a simple and effective query based instance segmentation method driven by parallel supervision on dynamic mask heads, which outperforms previous arts in terms of both accuracy and speed.
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Our QueryTrack (i.e., Tracking Instances as Queries, tech report) based on QueryInst won the 2nd place
(AP = 52.3 @ test set, AP = 54.3 @ val set)in video instance segmentation (VIS) track with single online end-to-end model, single scale testing & without using extra video training data in the 3rd Large-scale Video Object Segmentation Challenge, CVPR 2021. -
For the first time, we demonstrate that an end-to-end query based framework driven by parallel supervision is competitive with well-established and highly-optimized methods in a wide range of instance-level recognition tasks (object detection, instance segmentation and video instance segmentation).
by Yuxin Fang*, Shusheng Yang*, Xinggang Wang†, Yu Li, Chen Fang, Ying Shan, Bin Feng, Wenyu Liu.
(*) equal contribution, (†) corresponding author.

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This repo serves as the official implementation for QueryInst, based on mmdetection and built upon Sparse R-CNN & DETR. Implantations based on Detectron2 will be released in the near future.
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This project is under active development, we will extend QueryInst to a wide range of instance-level recognition tasks.
Main Results on COCO test-dev
| Configs | Aug. | Weights | Box AP | Mask AP |
|---|---|---|---|---|
| QueryInst_Swin_L_300_queries (single scale testing) | 400 ~ 1200, w/ Crop | baidu / google | 56.1 | 49.1 |
Main Results on COCO val
| Configs | Aug. | Weights | Box AP | Mask AP |
|---|---|---|---|---|
| QueryInst_R50_3x_300_queries | 480 ~ 800, w/ Crop | baidu / google | 46.9 | 41.4 |
| QueryInst_R101_3x_300_queries | 480 ~ 800, w/ Crop | baidu / google | 48.0 | 42.4 |
| QueryInst_X101-DCN_3x_300_queries | 480 ~ 800, w/ Crop | - | 50.3 | 44.2 |
| QueryInst_Swin_L_300_queries (single scale testing) | 400 ~ 1200, w/ Crop | baidu / google | 56.1 | 48.9 |
Notes:
- Accesscode for
baiduisQIst.
Getting Started
- Our project is mainly developed on mmdetection toolbox
(931d96), please refer to the mmdetection official installation. - Install
QueryInstby:
python setup.py develop
- Prepare datasets:
mkdir data && cd data
ln -s /path/to/coco coco
- Training QueryInst with single GPU:
python tools/train.py configs/queryinst/queryinst_r50_fpn_1x_coco.py
- Training QueryInst with multi GPUs:
./tools/dist_train.sh configs/queryinst/queryinst_r50_fpn_1x_coco.py 8
- Test QueryInst on COCO val set with single GPU:
python tools/test.py configs/queryinst/queryinst_r50_fpn_1x_coco.py PATH/TO/CKPT.pth --eval bbox segm
- Test QueryInst on COCO val set with multi GPUs:
./tools/dist_test.sh configs/queryinst/queryinst_r50_fpn_1x_coco.py PATH/TO/CKPT.pth 8 --eval bbox segm
Citation
If you find our paper and code useful in your research, please consider giving a star :star: and citation :pencil: :
@InProceedings{Fang_2021_ICCV,
author = {Fang, Yuxin and Yang, Shusheng and Wang, Xinggang and Li, Yu and Fang, Chen and Shan, Ying and Feng, Bin and Liu, Wenyu},
title = {Instances As Queries},
booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
month = {October},
year = {2021},
pages = {6910-6919}
}
@article{QueryTrack,
title={Tracking Instances as Queries},
author={Yang, Shusheng and Fang, Yuxin and Wang, Xinggang and Li, Yu and Shan, Ying and Feng, Bin and Liu, Wenyu},
journal={arXiv preprint arXiv:2106.11963},
year={2021}
}
TODO
- [x] QueryInst training and inference code.
- [x] QueryInst with Swin-Transformer and Test-Time-Augmentation.
- [ ] QueryInst configurations for Cityscapes and YouTube-VIS.
- [x] QueryInst pretrain weights.