Feb. 1, 2024, 12:42 p.m. | Wei Feng Feifan Wang Ruize Han Zekun Qian Song Wang

cs.CV updates on arXiv.org arxiv.org

Multi-view multi-human association and tracking (MvMHAT), is a new but important problem for multi-person scene video surveillance, aiming to track a group of people over time in each view, as well as to identify the same person across different views at the same time, which is different from previous MOT and multi-camera MOT tasks only considering the over-time human tracking. This way, the videos for MvMHAT require more complex annotations while containing more information for self learning. In this work, …

association cs.ai cs.cv human identify people person power supervision surveillance tracking video video surveillance view

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