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Cluster-guided Asymmetric Contrastive Learning for Unsupervised Person Re-Identification

About

Unsupervised person re-identification (Re-ID) aims to match pedestrian images from different camera views in unsupervised setting. Existing methods for unsupervised person Re-ID are usually built upon the pseudo labels from clustering. However, the quality of clustering depends heavily on the quality of the learned features, which are overwhelmingly dominated by the colors in images especially in the unsupervised setting. In this paper, we propose a Cluster-guided Asymmetric Contrastive Learning (CACL) approach for unsupervised person Re-ID, in which cluster structure is leveraged to guide the feature learning in a properly designed asymmetric contrastive learning framework. To be specific, we propose a novel cluster-level contrastive loss to help the siamese network effectively mine the invariance in feature learning with respect to the cluster structure within and between different data augmentation views, respectively. Extensive experiments conducted on three benchmark datasets demonstrate superior performance of our proposal.

Mingkun Li, Chun-Guang Li, Jun Guo• 2021

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationMarket1501 (test)
Rank-1 Accuracy92.7
1264
Person Re-IdentificationDuke MTMC-reID (test)
Rank-185.5
1018
Person Re-IdentificationMSMT17
mAP0.299
404
Person Re-IdentificationMarket-1501 (test)
Rank-193.3
384
Person Re-IdentificationLTCC General
mAP22.3
82
Person Re-IdentificationPRCC Clothes-Changing
Top-1 Acc41.7
76
Person Re-IdentificationCeleb-reID (test)
Rank-142.3
59
Person Re-IdentificationLTCC CC
Top-1 Acc9.8
57
Person Re-IdentificationVC-Clothes (CC)
Top-1 Acc58.9
48
Person Re-IdentificationVC-Clothes general (all cams)
Top-1 Acc82.4
30
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