视频序列中行人跟踪组

J. Marques, P. Jorge, A. Abrantes, J. M. Lemos
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引用次数: 72

摘要

本文描述了一种视频序列中目标群的跟踪算法。在这项工作中解决的主要困难是被跟踪对象的总遮挡以及组合并和分裂。提出了一种两层解决方案来克服这些困难。第一层产生一组基于低级操作的时空笔画,这些低级操作设法在大多数时候跟踪活动区域。第二层使用基于贝叶斯网络的统计模型对检测到的片段进行一致标记。贝叶斯网络在跟踪操作期间递归计算,并允许每次有新信息可用时更新跟踪结果。实验测试表明了该算法在模糊情况下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking Groups of Pedestrians in Video Sequences
This paper describes an algorithm for tracking groups of objects in video sequences. The main difficulties addressed in this work concern total occlusions of the objects to be tracked as well as group merging and splitting. A two layer solution is proposed to overcome these difficulties. The first layer produces a set of spatio temporal strokes based on low level operations which manage to track the active regions most of the time. The second layer performs a consistent labeling of the detected segments using a statistical model based on Bayesian networks. The Bayesian network is recursively computed during the tracking operation and allows the update of the tracker results everytime new information is available. Experimental tests are included to show the performance of the algorithm in ambiguous situations.
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