Learning a generalizable re-identification model from unlabelled data with domain-agnostic expert
In response to real-world scenarios, the domain generalization (DG) problem has spurred considerable research in person re-identification (ReID). This challenge arises when the target domain, which is significantly different from the source domains, remains unknown. However, the performance of current DG ReID relies heavily on labor-intensive source domain annotations. Considering the potential of unlabeled data, we investigate unsupervised domain generalization (UDG) in ReID. Our goal is to create a model that can generalize from unlabeled source domains to semantically retrieve images in an unseen target domain. To address this, we propose a new approach that trains a domain-agnostic expert (DaE) for unsupervised domain-generalizable person ReID. This involves independently training multiple experts to account for label space inconsistencies between source domains. At the same time, the DaE captures domain-generalizable information for testing. Our experiments demonstrate the effectiveness of this method for learning generalizable features under the UDG setting. The results demonstrate the superiority of our method over state-of-the-art techniques. We will make our code and models available for public use.
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Multimedia Systems
1 publication, 16.67%
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Lecture Notes in Computer Science
1 publication, 16.67%
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Knowledge-Based Systems
1 publication, 16.67%
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Institute of Electrical and Electronics Engineers (IEEE)
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Springer Nature
2 publications, 33.33%
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Elsevier
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