Appearance-free Tripartite Matching for Multiple Object Tracking
Lijun Wang, Yanting Zhu, Jue Shi, Xiaodan Fan

TL;DR
This paper introduces an appearance-free tripartite matching algorithm for multiple object tracking that emphasizes velocity smoothness and global optimization, outperforming existing methods especially in complex biological and surveillance videos.
Contribution
It proposes a novel tripartite matching framework using dynamic programming to improve velocity smoothness and avoid appearance dependence in MOT tasks.
Findings
Outperforms top methods on Cell Tracking Challenge
Demonstrates superior accuracy and efficiency in simulations
Successfully applied to cancer cell motion tracking
Abstract
Multiple Object Tracking (MOT) detects the trajectories of multiple objects given an input video. It has become more and more important for various research and industry areas, such as cell tracking for biomedical research and human tracking in video surveillance. Most existing algorithms depend on the uniqueness of the object's appearance, and the dominating bipartite matching scheme ignores the speed smoothness. Although several methods have incorporated the velocity smoothness for tracking, they either fail to pursue global smooth velocity or are often trapped in local optimums. We focus on the general MOT problem regardless of the appearance and propose an appearance-free tripartite matching to avoid the irregular velocity problem of the bipartite matching. The tripartite matching is formulated as maximizing the likelihood of the state vectors constituted of the position and…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Vision and Imaging · Immunotherapy and Immune Responses
