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A Bayesian Approach to Multiple Target Detection and Tracking

机译:用于多目标检测和跟踪的贝叶斯方法

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摘要

This paper considers the problem of simultaneously detecting and tracking multiple targets. The problem can be formulated in a Bayesian framework and solved, in principle, by computation of the joint multitarget probability density (JMPD). In practice, exact computation of the JMPD is impossible, and the predominant challenge is to arrive at a computationally tractable approximation. A particle filtering scheme is developed for this purpose in which each particle is a hypothesis on the number of targets present and the states of those targets. The importance density for the particle filter is designed in such a way that the measurements can guide sampling of both the target number and the target states. Simulation results, with measurements generated from real target trajectories, demonstrate the ability of the proposed procedure to simultaneously detect and track ten targets with a reasonable sample size.
机译:本文考虑了同时检测和跟踪多个目标的问题。可以在贝叶斯框架中提出问题,并且原则上可以通过计算联合多目标概率密度(JMPD)来解决该问题。实际上,JMPD的精确计算是不可能的,而主要的挑战是得出计算上易于处理的近似值。为此目的,开发了一种粒子过滤方案,其中每个粒子都是关于存在的目标数量和这些目标的状态的假设。颗粒过滤器的重要性密度以这样的方式设计:测量值可以指导对目标数量和目标状态进行采样。仿真结果以及从真实目标轨迹生成的测量结果表明,该程序具有以合理的样本量同时检测和跟踪十个目标的能力。

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