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Gu Xinqian ; Chang Hong ; Ma Bingpeng ; Bai Shutao ; Shan Shiguang ; Chen Xilin

Abstract
The key to address clothes-changing person re-identification (re-id) is toextract clothes-irrelevant features, e.g., face, hairstyle, body shape, andgait. Most current works mainly focus on modeling body shape frommulti-modality information (e.g., silhouettes and sketches), but do not makefull use of the clothes-irrelevant information in the original RGB images. Inthis paper, we propose a Clothes-based Adversarial Loss (CAL) to mineclothes-irrelevant features from the original RGB images by penalizing thepredictive power of re-id model w.r.t. clothes. Extensive experimentsdemonstrate that using RGB images only, CAL outperforms all state-of-the-artmethods on widely-used clothes-changing person re-id benchmarks. Besides,compared with images, videos contain richer appearance and additional temporalinformation, which can be used to model proper spatiotemporal patterns toassist clothes-changing re-id. Since there is no publicly availableclothes-changing video re-id dataset, we contribute a new dataset named CCVIDand show that there exists much room for improvement in modeling spatiotemporalinformation. The code and new dataset are available at:https://github.com/guxinqian/Simple-CCReID.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| multiview-gait-recognition-on-casia-b | CAL (RGB), AP3DNLResNet50 | Accuracy (Cross-View, Avg): 97.3 BG#1-2: 99.8 CL#1-2: 92.3 NM#5-6 : 99.9 |
| person-re-identification-on-ccvid | CAL | Rank-1: 81.7 mAP: 79.6 |
| person-re-identification-on-ltcc | CAL | Rank-1: 40.1 mAP: 18.0 |
| person-re-identification-on-prcc | CAL | Rank-1: 55.2 mAP: 55.8 |
| person-re-identification-on-vc-clothes | CAL | Rank-1: 85.8 mAP: 79.8 |
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