Video-based open-world segmentation

Overview

UVO_Challenge

Team Alpes_runner Solutions

This is an official repo for our UVO Challenge solutions for Image/Video-based open-world segmentation. Our team "Alpes_runner" achieved the best performance on both Image/Video-based benchmarks. More details about the workshop can be found here.

Technical Reports

Models

Detection

Model Pretrained datasets Finetuned datasets links
UVO_Detector COCO - config/weights
UVO_Detector COCO UVO config/weights

Segmentation

Model Pretrained datasets Finetuned datasets links
UVO_Segementor COCO - weights
UVO_Segmentor COCO, PASCAL, OpenImage - config/weights
UVO_Segmentor COCO, PASCAL, OpenImage UVO config/weights

Citation

If you find this project useful in your research, please consider cite:

@article{du20211st,
  title={1st Place Solution for the UVO Challenge on Image-based Open-World Segmentation 2021},
  author={Du, Yuming and Guo, Wen and Xiao, Yang and Lepetit, Vincent},
  journal={arXiv preprint arXiv:2110.10239},
  year={2021}
}

@article{du20211st,
  title={1st Place Solution for the UVO Challenge on Video-based Open-World Segmentation 2021},
  author={Du, Yuming and Guo, Wen and Xiao, Yang and Lepetit, Vincent},
  journal={arXiv preprint arXiv:2110.11661},
  year={2021}
}

Contact

Feel free to contact me or open a new issue if you have any questions.

Owner
Yuming Du
PhD Computer Vision
Yuming Du
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