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Multi-task mid-level feature alignment network for unsupervised cross-dataset person re-identification

conference contribution
posted on 2018-01-01, 00:00 authored by S Lin, H Li, Chang-Tsun LiChang-Tsun Li, A C Kot
© 2018. The copyright of this document resides with its authors. Most existing person re-identification (Re-ID) approaches follow a supervised learning framework, in which a large number of labelled matching pairs are required for training. Such a setting severely limits their scalability in real-world applications where no labelled samples are available during the training phase. To overcome this limitation, we develop a novel unsupervised Multi-task Mid-level Feature Alignment (MMFA) network for the unsupervised cross-dataset person re-identification task. Under the assumption that the source and target datasets share the same set of mid-level semantic attributes, our proposed model can be jointly optimised under the person's identity classification and the attribute learning task with a cross-dataset mid-level feature alignment regularisation term. In this way, the learned feature representation can be better generalised from one dataset to another which further improve the person re-identification accuracy. Experimental results on four benchmark datasets demonstrate that our proposed method outperforms the state-of-the-art baselines.

History

Event

BMVC 2018 (29th : 2018 : Newcastle upon Tyne, England)

Publisher

BMVC

Location

Newcastle upon Tyne, England

Place of publication

[Newcastle upon Tyne, England]

Start date

2018-09-03

End date

2018-09-06

Language

eng

Publication classification

E1.1 Full written paper - refereed

Copyright notice

2018, The Authors

Title of proceedings

BMVC 2018: Proceedings of the 29th British Machine Vision Conference

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