Review and Analysis of RGBT Single Object Tracking Methods: A Fusion Perspective
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Published:2024-07-09
Issue:8
Volume:20
Page:1-27
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ISSN:1551-6857
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Container-title:ACM Transactions on Multimedia Computing, Communications, and Applications
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language:en
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Short-container-title:ACM Trans. Multimedia Comput. Commun. Appl.
Author:
Zhang Zhihao1ORCID, Wang Jun1ORCID, Li Shengjie2ORCID, Jin Lei2ORCID, Wu Hao3ORCID, Zhao Jian4ORCID, Zhang Bo1ORCID
Affiliation:
1. National Innovation Institute of Defense Technology, Beijing, China 2. Beijing University of Posts and Telecommunications, Beijing, China 3. Beijing Normal University, Beijing, China 4. Northwestern Polytechnical University, Xi'an, China & China Telecom AI Institute, Beijing, China
Abstract
Visual tracking is a fundamental task in computer vision with significant practical applications in various domains, including surveillance, security, robotics, and human-computer interaction. However, it may face limitations in visible light data, such as low-light environments, occlusion, and camouflage, which can significantly reduce its accuracy. To cope with these challenges, researchers have explored the potential of combining the visible and infrared modalities to improve tracking performance. By leveraging the complementary strengths of visible and infrared data, RGB-infrared fusion tracking has emerged as a promising approach to address these limitations and improve tracking accuracy in challenging scenarios. In this article, we present a review on RGB-infrared fusion tracking. Specifically, we categorize existing RGBT tracking methods into four categories based on their underlying architectures, feature representations, and fusion strategies, namely feature decoupling based method, feature selecting based method, collaborative graph tracking method, and traditional fusion method. Furthermore, we provide a critical analysis of their strengths, limitations, representative methods, and future research directions. To further demonstrate the advantages and disadvantages of these methods, we present a review of publicly available RGBT tracking datasets and analyze the main results on public datasets. Moreover, we discuss some limitations in RGBT tracking at present and provide some opportunities and future directions for RGBT visual tracking, such as dataset diversity, unsupervised and weakly supervised applications. In conclusion, our survey aims to serve as a useful resource for researchers and practitioners interested in the emerging field of RGBT tracking, and to promote further progress and innovation in this area.
Funder
Natural Science Foundation of China Young Elite Scientist Sponsorship Program of China Association for Science and Technology Young Elite Scientist Sponsorship Program of Beijing Association for Science and Technology National Natural Science Foundation of China
Publisher
Association for Computing Machinery (ACM)
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