Author:
Zhang Pengyu,Wang Dong,Lu Huchuan
Abstract
AbstractVisual object tracking has been drawing increasing attention in recent years, as a fundamental task in computer vision. To extend the range of tracking applications, researchers have been introducing information from multiple modalities to handle specific scenes, with promising research prospects for emerging methods and benchmarks. To provide a thorough review of multi-modal tracking, different aspects of multi-modal tracking algorithms are summarized under a unified taxonomy, with specific focus on visible-depth (RGB-D) and visible-thermal (RGB-T) tracking. Subsequently, a detailed description of the related benchmarks and challenges is provided. Extensive experiments were conducted to analyze the effectiveness of trackers on five datasets: PTB, VOT19-RGBD, GTOT, RGBT234, and VOT19-RGBT. Finally, various future directions, including model design and dataset construction, are discussed from different perspectives for further research.
Publisher
Springer Science and Business Media LLC
Reference127 articles.
1. Li, C. L.; Cheng, H.; Hu, S. Y.; Liu, X. B.; Tang, J.; Lin, L. Learning collaborative sparse representation for grayscale-thermal tracking. IEEE Transactions on Image Processing Vol. 25, No. 12, 5743–5756, 2016.
2. Li, C. L.; Zhao, N.; Lu, Y. J.; Zhu, C. L.; Tang, J. Weighted sparse representation regularized graph learning for RGB-T object tracking. In: Proceedings of the 25th ACM International Conference on Multimedia, 1856–1864, 2017.
3. Li, C. L.; Liang, X. Y.; Lu, Y. J.; Zhao, N.; Tang, J. RGB-T object tracking: Benchmark and baseline. Pattern Recognition Vol. 96, 106977, 2019.
4. Xiao, J. J.; Stolkin, R.; Gao, Y. Q.; Leonardis, A. Robust fusion of color and depth data for RGB-D target tracking using adaptive range-invariant depth models and spatio-temporal consistency constraints. IEEE Transactions on Cybernetics Vol. 48, No. 8, 2485–2499, 2018.
5. Kristan, M.; Leonardis, A.; Matas, J.; Felsberg, M.; Pflugfelder, R.; Kämäräinen, J. K.; Danelljan, M.;, Lukežič, A.; Drbohlav, O.; He, L.; et al. The eighth visual object tracking VOT2020 challenge results. In: Computer Vision–ECCV 2020 Workshops Lecture Notes in Computer Science, Vol. 12539. Bartoli, A.; Fusiello, A. Eds. Springer Cham, 547–601, 2020.
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献