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SiCL: Silhouette-Driven Contrastive Learning for Unsupervised Person Re-Identification with Clothes Change

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In this paper, we address a highly challenging yet critical task: unsupervised long-term person re-identification with clothes change. Existing unsupervised person re-id methods are mainly designed for short-term scenarios and usually rely on RGB cues so that fail to perceive feature patterns that are independent of the clothes. To crack this bottleneck, we propose a silhouette-driven contrastive learning (SiCL) method, which is designed to learn cross-clothes invariance by integrating both the RGB cues and the silhouette information within a contrastive learning framework. To our knowledge, this is the first tailor-made framework for unsupervised long-term clothes change \reid{}, with superior performance on six benchmark datasets. We conduct extensive experiments to evaluate our proposed SiCL compared to the state-of-the-art unsupervised person reid methods across all the representative datasets. Experimental results demonstrate that our proposed SiCL significantly outperforms other unsupervised re-id methods.

Mingkun Li, Peng Xu, Chun-Guang Li, Jun Guo• 2023

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationLTCC General
mAP27.6
82
Person Re-IdentificationPRCC Clothes-Changing
Top-1 Acc43.2
76
Person Re-IdentificationCeleb-reID (test)
Rank-145.4
59
Person Re-IdentificationLTCC CC
Top-1 Acc20.7
57
Person Re-IdentificationVC-Clothes (CC)
Top-1 Acc71.7
48
Person Re-IdentificationVC-Clothes general (all cams)
Top-1 Acc87.9
30
Person Re-IdentificationCeleb-reID-light (test)
mAP5.6
25
Person Re-IdentificationPRCC General setting
R-193.8
16
Person Re-IdentificationDeepChange (test)
mAP12.4
5
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