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Real-World Person Re-Identification via Degradation Invariance Learning

机译:通过退化不变性学习对现实世界中的人进行重新识别

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Person re-identification (Re-ID) in real-world scenarios usually suffers from various degradation factors, e.g., low-resolution, weak illumination, blurring and adverse weather. On the one hand, these degradations lead to severe discriminative information loss, which significantly obstructs identity representation learning; on the other hand, the feature mismatch problem caused by low-level visual variations greatly reduces retrieval performance. An intuitive solution to this problem is to utilize low-level image restoration methods to improve the image quality. However, existing restoration methods cannot directly serve to real-world Re-ID due to various limitations, e.g., the requirements of reference samples, domain gap between synthesis and reality, and incompatibility between low-level and high-level methods. In this paper, to solve the above problem, we propose a degradation invariance learning framework for real-world person Re-ID. By introducing a self-supervised disentangled representation learning strategy, our method is able to simultaneously extract identity-related robust features and remove real-world degradations without extra supervision. We use low-resolution images as the main demonstration, and experiments show that our approach is able to achieve state-of-the-art performance on several Re-ID benchmarks. In addition, our framework can be easily extended to other real-world degradation factors, such as weak illumination, with only a few modifications.
机译:现实情况下的人员重新识别(Re-ID)通常受到各种降级因素的影响,例如,低分辨率,弱照明,模糊和不利天气。一方面,这些降级导致严重的歧视性信息丢失,这严重阻碍了身份表示学习。另一方面,由低级视觉变化引起的特征不匹配问题大大降低了检索性能。解决此问题的一个直观解决方案是利用低级图像恢复方法来提高图像质量。但是,由于各种限制,例如参考样本的要求,合成与现实之间的领域差距以及低级和高级方法之间的不兼容,现有的恢复方法无法直接用于现实世界的Re-ID。在本文中,为解决上述问题,我们提出了一种针对真实人的Re-ID的退化不变性学习框架。通过引入自我监督的解缠表示学习策略,我们的方法能够在无需额外监督的情况下同时提取与身份相关的鲁棒特征并消除现实世界中的退化。我们使用低分辨率图像作为主要演示,实验表明,我们的方法能够在多个Re-ID基准测试中达到最先进的性能。此外,只需少量修改,我们的框架即可轻松扩展到其他现实世界的退化因素,例如弱照明。

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