GM-PHD与轨迹导向PMHT的数据关联

Shicang Zhang, Jian-xun Li, Binyi Fan, Liangbin Wu
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引用次数: 1

摘要

高斯混合概率假设密度(GM-PHD)滤波器是概率假设密度滤波器的一种封闭解,它可以基于随机有限集理论估计目标的状态和时变数量。概率多假设跟踪(PMHT)是一种结合数据关联和期望最大化的多目标跟踪算法。然而,由于无法提供目标的身份信息,GM-PHD无法给出目标的轨迹。此外,PMHT首先需要已知目标数量和多帧目标轨迹,这给实际应用带来了困难。首先,我们提出了面向轨迹的PMHT跟踪器(TO-PMHTT),然后结合GM-PHD和TO-PMHTT的优点,设计了一种数据关联方法。GM-PHD在场景中没有交叉目标时作为TO-PMHTT的预滤波器,当目标进入交叉区域时GM-PHD与TO-PMHTT进行交互。计算机仿真结果表明,该方法可以为分离目标和交叉目标的跟踪提供关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data association for GM-PHD with track oriented PMHT
Gaussian Mixture probability hypothesis density (GM-PHD) filter is a closed-form solution to the probability hypothesis density filter, which could estimate states and time-varying number of targets based on theory of random finite set. Probability multiple hypotheses tracking (PMHT) is a multi-target tracking algorithm combining data association and expectation-maximization. However, GM-PHD can not give trajectories of target because of its disability of providing identity of target. Furthermore, PMHT need known number of targets and several frames trajectories of targets at first which are difficult in practical application. Firstly, we propose track oriented PMHT tracker (TO-PMHTT), then an approach of data association combining the advantage of GM-PHD with TO-PMHTT is designed in this paper. GM-PHD acts as the pre-filter of TO-PMHTT when there are no crossing targets in the scenario, while interaction between GM-PHD and TO-PMHTT is performed when targets enter crossing zone. Computer simulation results show that the method can provide association for both separated and crossing targets tracking.
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