Multi-Domain Adversarial Feature Generalization for Person Re-Identification
Shan Lin, Chang-Tsun Li, Alex C. Kot

TL;DR
This paper introduces a multi-dataset adversarial auto-encoder approach for person re-identification that learns a universal, domain-invariant feature representation capable of generalizing to unseen camera systems without requiring target domain data during training.
Contribution
The paper proposes MMFA-AAE, a novel multi-dataset adversarial auto-encoder that enhances person Re-ID by learning domain-invariant features for better generalization to new environments.
Findings
Outperforms most domain generalization methods in person Re-ID.
Surpasses many supervised and unsupervised domain adaptation methods.
Effectively learns universal features that generalize to unseen camera systems.
Abstract
With the assistance of sophisticated training methods applied to single labeled datasets, the performance of fully-supervised person re-identification (Person Re-ID) has been improved significantly in recent years. However, these models trained on a single dataset usually suffer from considerable performance degradation when applied to videos of a different camera network. To make Person Re-ID systems more practical and scalable, several cross-dataset domain adaptation methods have been proposed, which achieve high performance without the labeled data from the target domain. However, these approaches still require the unlabeled data of the target domain during the training process, making them impractical. A practical Person Re-ID system pre-trained on other datasets should start running immediately after deployment on a new site without having to wait until sufficient images or videos…
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