Multi-target Joint Tracking and Classification Using the Trajectory PHD Filter

Shaoxiu Wei, Boxiang Zhang, Wei Yi
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引用次数: 1

Abstract

To account for joint tracking and classification (JTC) of multiple targets from observation sets in presence of detection uncertainty, noise and clutter, this paper develops a new trajectory probability hypothesis density (TPHD) filter, which is referred to as the JTC-TPHD filter. The JTC-TPHD filter classifies different targets based on their motion models and each target is assigned with multiple class hypotheses. By using this strategy, we can not only obtain the category information of the targets, but also a more accurate trajectory estimation than the traditional TPHD filter. The JTC-TPHD filter is derived by finding the best Poisson posterior approximation over trajectories on an augmented state space using the Kullback-Leibler divergence (KLD) minimization. The Gaussian mixture is adopted for the implementation, which is referred to as the GMJTC-TPHD filter. The L-scan approximation is also presented for the GM-JTC-TPHD filter, which possesses lower computational burden. Simulation results show that the GM-JTC-TPHD filter can classify targets correctly and obtain accurate trajectory estimation.
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基于轨迹PHD滤波的多目标联合跟踪与分类
针对存在检测不确定性、噪声和杂波的情况下观测集中多目标的联合跟踪与分类问题,本文提出了一种新的轨迹概率假设密度(TPHD)滤波器,简称JTC-TPHD滤波器。JTC-TPHD滤波器根据目标的运动模型对不同的目标进行分类,并为每个目标分配多个类假设。利用该策略不仅可以获得目标的类别信息,而且可以比传统的TPHD滤波器获得更准确的轨迹估计。JTC-TPHD滤波器是通过使用Kullback-Leibler散度(KLD)最小化在增广状态空间上的轨迹上找到最佳泊松后验逼近而导出的。采用高斯混合滤波器实现,称为GMJTC-TPHD滤波器。本文还对GM-JTC-TPHD滤波器提出了l扫描近似,该近似具有较低的计算量。仿真结果表明,GM-JTC-TPHD滤波器能够对目标进行正确分类,获得准确的弹道估计。
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