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Learning Diverse Features with Part-Level Resolution for Person Re-Identification

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Learning diverse features is key to the success of person re-identification. Various part-based methods have been extensively proposed for learning local representations, which, however, are still inferior to the best-performing methods for person re-identification. This paper proposes to construct a strong lightweight network architecture, termed PLR-OSNet, based on the idea of Part-Level feature Resolution over the Omni-Scale Network (OSNet) for achieving feature diversity. The proposed PLR-OSNet has two branches, one branch for global feature representation and the other branch for local feature representation. The local branch employs a uniform partition strategy for part-level feature resolution but produces only a single identity-prediction loss, which is in sharp contrast to the existing part-based methods. Empirical evidence demonstrates that the proposed PLR-OSNet achieves state-of-the-art performance on popular person Re-ID datasets, including Market1501, DukeMTMC-reID and CUHK03, despite its small model size.

Ben Xie, Xiaofu Wu, Suofei Zhang, Shiliang Zhao, Ming Li• 2020

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationMarket1501 (test)
Rank-1 Accuracy95.6
1264
Person Re-IdentificationDuke MTMC-reID (test)
Rank-191.6
1018
Person Re-IdentificationMarket 1501
mAP88.9
999
Person Re-IdentificationDukeMTMC-reID
Rank-1 Acc91.6
648
Person Re-IdentificationMarket-1501 1.0 (test)
Rank-195.6
131
Person Re-IdentificationCUHK03 Detected (test)
mAP77.2
72
Person Re-IdentificationCUHK03 Labeled (test)
mAP80.5
61
Person Re-IdentificationCUHK03 Labeled (767/700)
Rank-184.6
56
Person Re-IdentificationCUHK03 Detected (767/700 split)
R180.4
49
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