JOURNAL ARTICLE

Unsupervised Cross-Dataset Transfer Learning for Person Re-identification

Abstract

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. This severely limits their scalability in realworld applications. To overcome this limitation, we develop a novel cross-dataset transfer learning approach to learn a discriminative representation. It is unsupervised in the sense that the target dataset is completely unlabelled. Specifically, we present an multi-task dictionary learning method which is able to learn a dataset-shared but target-data-biased representation. Experimental results on five benchmark datasets demonstrate that the method significantly outperforms the state-of-the-art.

Keywords:
Computer science Transfer of learning Identification (biology) Unsupervised learning Artificial intelligence Machine learning

Metrics

438
Cited By
32.60
FWCI (Field Weighted Citation Impact)
61
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1.00
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