【CVPR】Good is Bad_Causality Inspired Cloth-Debiasing for Cloth-Changing Person Re-Identification
Good is Bad: Causality Inspired Cloth-Debiasing for Cloth-Changing Person Re-Identification
Shared by:Peini Guo
Research direction:Cloth-Changing Person Re-ID
Title:Good is Bad: Causality Inspired Cloth-Debiasing for Cloth-Changing Person Re-Identification
Authors:Zhengwei Yang, Meng Lin, Xian Zhong, Yu Wu, Zheng Wang
Institution:Wuhan University, Wuhan University of Technology
Abstract:Entangled representation of clothing and identity (ID)-intrinsic clues are potentially concomitant in conventional person Re-IDentification (ReID). Nevertheless, eliminating the negative impact of clothing on ID remains challenging due to the lack of theory and the difficulty of isolating the exact implications. In this paper, a causality-based Auto-Intervention Model, referred to as AIM, is first proposed to mitigate clothing bias for robust cloth-changing person ReID (CC-ReID). Specifically, we analyze the effect of clothing on the model inference and adopt a dual-branch model to simulate causal intervention. Progressively, clothing bias is eliminated automatically with model training. AIM is encouraged to learn more discriminative ID clues that are free from clothing bias. Extensive experiments on two standard CC-ReID datasets demonstrate the superiority of the proposed AIM over other state-of-the-art methods.
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