A unified deep semantic expansion framework for domain-generalized person re-identification
Supervised Person Re-identification (Person ReID) methods have achieved excellent performance when training and testing within one camera network. However, they usually suffer from considerable performance degradation when applied to different camera systems. In recent years, many Domain Adaptati...
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sg-ntu-dr.10356-1808362024-10-29T04:24:58Z A unified deep semantic expansion framework for domain-generalized person re-identification Ang, Eugene P. W. Lin, Shan Kot, Alex Chichung School of Electrical and Electronic Engineering Rapid-Rich Object Search (ROSE) Lab Engineering Person re-identification Image retrieval Supervised Person Re-identification (Person ReID) methods have achieved excellent performance when training and testing within one camera network. However, they usually suffer from considerable performance degradation when applied to different camera systems. In recent years, many Domain Adaptation Person ReID methods have been proposed, achieving impressive performance without requiring labeled data from the target domain. However, these approaches still need the unlabeled data of the target domain during the training process, making them impractical in many real-world scenarios. Our work focuses on the more practical Domain Generalized Person Re-identification (DG-ReID) problem. Given one or more source domains, it aims to learn a generalized model that can be applied to unseen target domains. One promising research direction in DG-ReID is the use of implicit deep semantic feature expansion, and our previous method, Domain Embedding Expansion (DEX), is one such example that achieves powerful results in DG-ReID. However, in this work we show that DEX and other similar implicit deep semantic feature expansion methods, due to limitations in their proposed loss function, fail to reach their full potential on large evaluation benchmarks as they have a tendency to saturate too early. Leveraging on this analysis, we propose Unified Deep Semantic Expansion, our novel framework that unifies implicit and explicit semantic feature expansion techniques in a single framework to mitigate this early over-fitting and achieve a new state-of-the-art (SOTA) in all DG-ReID benchmarks. Further, we apply our method on more general image retrieval tasks, also surpassing the current SOTA in all of these benchmarks by wide margins. Defence Medical Research Institute, DSTA This work was supported by the Defence Science and Technology Agency (DSTA) Postgraduate Scholarship, of which Eugene P.W. Ang is a recipient. 2024-10-29T04:24:57Z 2024-10-29T04:24:57Z 2024 Journal Article Ang, E. P. W., Lin, S. & Kot, A. C. (2024). A unified deep semantic expansion framework for domain-generalized person re-identification. Neurocomputing, 600, 128120-. https://dx.doi.org/10.1016/j.neucom.2024.128120 0925-2312 https://hdl.handle.net/10356/180836 10.1016/j.neucom.2024.128120 2-s2.0-85197535901 600 128120 en Neurocomputing © 2024 Elsevier B.V. All rights are reserved, including those for text and data mining, AI training, and similar technologies. |
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Engineering Person re-identification Image retrieval Ang, Eugene P. W. Lin, Shan Kot, Alex Chichung A unified deep semantic expansion framework for domain-generalized person re-identification |
description |
Supervised Person Re-identification (Person ReID) methods have achieved
excellent performance when training and testing within one camera network.
However, they usually suffer from considerable performance degradation when
applied to different camera systems. In recent years, many Domain Adaptation
Person ReID methods have been proposed, achieving impressive performance
without requiring labeled data from the target domain. However, these
approaches still need the unlabeled data of the target domain during the
training process, making them impractical in many real-world scenarios. Our
work focuses on the more practical Domain Generalized Person Re-identification
(DG-ReID) problem. Given one or more source domains, it aims to learn a
generalized model that can be applied to unseen target domains. One promising
research direction in DG-ReID is the use of implicit deep semantic feature
expansion, and our previous method, Domain Embedding Expansion (DEX), is one
such example that achieves powerful results in DG-ReID. However, in this work
we show that DEX and other similar implicit deep semantic feature expansion
methods, due to limitations in their proposed loss function, fail to reach
their full potential on large evaluation benchmarks as they have a tendency to
saturate too early. Leveraging on this analysis, we propose Unified Deep
Semantic Expansion, our novel framework that unifies implicit and explicit
semantic feature expansion techniques in a single framework to mitigate this
early over-fitting and achieve a new state-of-the-art (SOTA) in all DG-ReID
benchmarks. Further, we apply our method on more general image retrieval tasks,
also surpassing the current SOTA in all of these benchmarks by wide margins. |
author2 |
School of Electrical and Electronic Engineering |
author_facet |
School of Electrical and Electronic Engineering Ang, Eugene P. W. Lin, Shan Kot, Alex Chichung |
format |
Article |
author |
Ang, Eugene P. W. Lin, Shan Kot, Alex Chichung |
author_sort |
Ang, Eugene P. W. |
title |
A unified deep semantic expansion framework for domain-generalized person re-identification |
title_short |
A unified deep semantic expansion framework for domain-generalized person re-identification |
title_full |
A unified deep semantic expansion framework for domain-generalized person re-identification |
title_fullStr |
A unified deep semantic expansion framework for domain-generalized person re-identification |
title_full_unstemmed |
A unified deep semantic expansion framework for domain-generalized person re-identification |
title_sort |
unified deep semantic expansion framework for domain-generalized person re-identification |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/180836 |
_version_ |
1814777764210802688 |