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LIIR (CVPR'22)

Liulei Li, Tianfei Zhou, Wenguan Wangโ€ , Lu Yang, Jianwu Li, Yi Yang

[arXiv] [BibTeX]

Updates

  • An Unofficial implementation based on Pytorch has been released. Thanks to Beijing Institute of Technology!
  • This repo will release an official PaddlePaddle implementation for paper: Locality-Aware Inter-and Intra-Video Reconstruction for Self-Supervised Correspondence Learning.

Abstract

Our target is to learn visual correspondence from unlabeled videos. We develop LIIR, a locality-aware inter-and intra-video reconstruction framework that fills in three missing pieces, i.e., instance discrimination, location awareness, and spatial compactness, of self-supervised correspondence learning puzzle. First, instead of most existing efforts focusing on intra-video self-supervision only, we exploit cross video affinities as extra negative samples within a unified, inter-and intra-video reconstruction scheme. This enables instance discriminative representation learning by contrasting desired intra-video pixel association against negative inter-video correspondence. Second, we merge position information into correspondence matching, and design a position shifting strategy to remove the side-effect of position encoding during inter-video affinity computation, making our LIIR location-sensitive. Third, to make full use of the spatial continuity nature of video data, we impose a compactness-based constraint on correspondence matching, yielding more sparse and reliable solutions. The learned representation surpasses self-supervised state-of-the-arts on label propagation tasks including objects, semantic parts, and keypoints.

Other Related Work

Learning Video Object Segmentation from Unlabeled Videos (CVPR20)

Citing LIIR

@inproceedings{li2022locality,
  title={Locality-Aware Inter-and Intra-Video Reconstruction for Self-Supervised Correspondence Learning},
  author={Li, Liulei and Zhou, Tianfei and Wang, Wenguan and Yang, Lu and Li, Jianwu and Yang, Yi},
  booktitle={CVPR},
  year={2022}
}

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Contributors

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Stargazers

 avatar  avatar Jianan Wei avatar  avatar  avatar Wenhe Jia avatar  avatar Hcc avatar cyberPanda avatar  avatar  avatar  avatar Tianfei Zhou avatar Wenguan Wang avatar  avatar Yang avatar Yongxing Dai avatar

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