成对马尔可夫链的多目标滤波

Y. Petetin, F. Desbouvries
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引用次数: 0

摘要

概率假设密度(PHD)滤波器是针对多目标滤波问题的一种最新解决方案,该问题涉及对未知数量的目标及其状态进行估计。假设目标和相关观测的动力学服从隐马尔可夫链(HMC)模型,推导了PHD滤波方程。HMC模型最近被扩展到成对马尔可夫链(PMC)模型。本文主要研究目标和相关测量值遵循PMC模型时的多目标滤波问题,并将经典的PHD滤波扩展到这类模型。我们还提出了一种用于线性和高斯PMC的PMC PHD滤波器的高斯混合(GM)实现。我们的方法能够将多目标滤波扩展到更一般的跟踪场景,并且还能够推断与每个目标相关的测量的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-object filtering for pairwise Markov chains
The Probability Hypothesis Density (PHD) Filter is a recent solution to the multi-target filtering problem which consists in estimating an unknown number of targets and their states. The PHD filter equations are derived under the assumption that the dynamics of the targets and associated observations follow a Hidden Markov Chain (HMC) model. HMC models have been recently extended to Pairwise Markov Chains (PMC) models. In this paper, we focus on multi-target filtering when targets and associated measurements follow a PMC model, and we extend the classical PHD filter to such models. We also propose a Gaussian Mixture (GM) implementation of our PMC PHD filter for linear and Gaussian PMC. Our approach enables to extend multi-object filtering to more general tracking scenarios, and also enables to deduce an estimate of the measurement associated to each target.
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