상세 보기
- Xiong, Mingfu;
- Hu, Kaikang;
- Wang, Zhongyuan;
- Hu, Ruimin;
- Muhammad, Khan;
- 외 3명
WEB OF SCIENCE
6SCOPUS
6초록
Unsupervised person re-identification (ReID) has recently gained significant attention from researchers. ReID matches images of the same person from different camera views in various scenes without any labels. Existing clustering methods primarily rely on a fixed threshold (the maximum distance between sample points and clustering centroids) and overlook the importance of adjusting this threshold during continuous model optimization. This mismatch between clustering thresholds and inter- or intra-class spacing reduces clustering accuracy. To address this issue, this study proposes an Adaptive Clustering and Weighted Regularization Contrastive Learning (ACWRCL) framework for unsupervised person ReID. The ACWRCL framework comprises two main components: (1) the Clustering Threshold Adaptive Adjustment (CTAA) module, and (2) the Weighted Regularization Contrastive Learning (WRCL) module. The CTAA module dynamically adjusts the clustering threshold to align with model optimization, ensuring that the threshold remains within an appropriate range to prevent under- or over-robustness in the clustering model. The WRCL module uses the similarity ratio between the query sample and the clustering centroid relative to the overall similarity of all samples with the same labels as the query sample. This ratio is used as the weight in the loss function to penalize incorrect clustering and improve pseudo-label generation accuracy. Extensive experiments on public ReID datasets—Market-1501, MSMT17, Veri776, CUHK03, and PersonX—demonstrate the effectiveness of the proposed method. © 1999-2012 IEEE.
키워드
- 제목
- Adaptive Clustering and Weighted Regularization Contrastive Learning Framework for Unsupervised Person Re-identification
- 저자
- Xiong, Mingfu; Hu, Kaikang; Wang, Zhongyuan; Hu, Ruimin; Muhammad, Khan; Ser, Javier Del; Yang, Xiaokang; Sheng, anbd Bin
- 발행일
- 2025-07
- 유형
- Article
- 권
- 27
- 페이지
- 1 ~ 13