Improved Probability Hypothesis Density (PHD) Filter for Multitarget Tracking

K. Panta, B. Vo, Sumeetpal S. Singh
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引用次数: 52

Abstract

The probability hypothesis density (PHD) filter is a practical alternative to the optimal Bayesian multi-target filter based on random finite sets. It propagates the PHD function, the first order moment of the posterior multi-target density, from which the number of targets as well as their individual states can be extracted. Furthermore, the sequential Monte Carlo (SMC) approximation of the PHD filter (also known as particle-PHD filter) is available in the literature in order to overcome its intractability. However, the PHD filter keeps no track of the target identities and hence cannot produce track-valued estimates of individual targets. This work consider the use of an improved implementation, of the particle-PHD filter that gives the track-valued estimates of individual targets and propose a novel way for doing so. The improved PHD filter combines the particles approximation of the posterior PHD function and the peak extraction from the posterior PHD particles to create the target identities of the individual estimates. The improved PHD filter does not affect the convergence results of the particle-PHD filter
多目标跟踪的改进概率假设密度滤波
概率假设密度滤波器是基于随机有限集的最优贝叶斯多目标滤波器的一种实用替代方案。它传播后验多目标密度的一阶矩PHD函数,从中可以提取目标的数量及其各自的状态。此外,为了克服PHD滤波器(也称为粒子-PHD滤波器)的难处,在文献中可以使用顺序蒙特卡罗(SMC)逼近。然而,PHD过滤器不跟踪目标身份,因此不能产生单个目标的跟踪值估计。这项工作考虑使用粒子- phd滤波器的改进实现,该滤波器给出了单个目标的跟踪值估计,并提出了一种新的方法来实现这一点。改进的PHD滤波器将后验PHD函数的粒子逼近和后验PHD粒子的峰值提取相结合,以创建个体估计的目标身份。改进的PHD滤波器不影响粒子-PHD滤波器的收敛结果
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