Try Harder: Hard Sample Generation and Learning for Clothes-Changing Person Re-ID
Hankun Liu, Yujian Zhao, Guanglin Niu

TL;DR
This paper introduces a multimodal framework for generating and learning from hard samples in clothing-changing person re-identification, significantly improving robustness and convergence speed.
Contribution
It unifies textual and visual modalities to explicitly define, generate, and optimize hard samples, a novel approach in CC-ReID.
Findings
Achieves state-of-the-art performance on PRCC and LTCC datasets.
Significantly accelerates convergence of the learning process.
Effectively enhances model robustness to clothing and viewpoint changes.
Abstract
Hard samples pose a significant challenge in person re-identification (ReID) tasks, particularly in clothing-changing person Re-ID (CC-ReID). Their inherent ambiguity or similarity, coupled with the lack of explicit definitions, makes them a fundamental bottleneck. These issues not only limit the design of targeted learning strategies but also diminish the model's robustness under clothing or viewpoint changes. In this paper, we propose a novel multimodal-guided Hard Sample Generation and Learning (HSGL) framework, which is the first effort to unify textual and visual modalities to explicitly define, generate, and optimize hard samples within a unified paradigm. HSGL comprises two core components: (1) Dual-Granularity Hard Sample Generation (DGHSG), which leverages multimodal cues to synthesize semantically consistent samples, including both coarse- and fine-grained hard positives and…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Face recognition and analysis · Human Mobility and Location-Based Analysis
