Monte Carlo Methods for Sensor Management in Target Tracking

C. Kreucher, A. Hero
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引用次数: 6

Abstract

Surveillance for multi-target detection, identification and tracking is one of the natural problem domains in which particle filtering approaches have been gainfully applied. Sequential importance sampling is used to generate and update estimates of the joint multi-target probability density for the number of targets, their dynamical model, and their state vector. In many cases there are a large number of degrees of freedom in sensor deployment, e.g., choice of waveform or modality. This gives rise to a resource allocation problem that can be formulated as determining an optimal policy for a partially observable Markov decision process (POMDP). In this paper we summarize approaches to solving this problem which involve using particle filtering to estimate both posterior state probabilities and the expected reward for both myopic and multistage policies.
目标跟踪中传感器管理的蒙特卡罗方法
多目标检测、识别和跟踪的监测是粒子滤波方法得到有效应用的自然问题领域之一。序贯重要抽样用于生成和更新联合多目标概率密度估计,包括目标数量、目标动态模型和目标状态向量。在许多情况下,在传感器部署中有大量的自由度,例如,波形或模态的选择。这就产生了一个资源分配问题,可以将其表述为确定部分可观察马尔可夫决策过程(POMDP)的最优策略。在本文中,我们总结了解决这一问题的方法,包括使用粒子滤波来估计近视和多阶段策略的后验状态概率和期望奖励。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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