首页> 外文会议>Conference on Signal and Data Processing of Small Targets 2003; Aug 5-7, 2003; San Diego, California, USA >Tracking Multiple Targets Using a Particle Filter Representation of the Joint Multitarget Probability Density
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Tracking Multiple Targets Using a Particle Filter Representation of the Joint Multitarget Probability Density

机译:使用联合多目标概率密度的粒子滤波表示法跟踪多个目标

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This paper addresses the problem of tracking multiple moving targets by estimating their joint multitarget probability density (JMPD). The JMPD technique is a Bayesian method for tracking multiple targets that allows nonlinear, non-Gaussian target motions and measurement to state coupling. JMPD simultaneously estimates both the target states and the number of targets. In this paper, we give a new grid-free implementation of JMPD based on particle filtering techniques and explore several particle proposal strategies, resampling techniques, and particle diversification methods. We report the effect of these techniques on tracker performance in terms of tracks lost, mean squared error, and computational burden.
机译:本文通过估计多个运动目标的联合多目标概率密度(JMPD)来解决跟踪问题。 JMPD技术是用于跟踪多个目标的贝叶斯方法,该方法允许非线性,非高斯目标运动和状态耦合测量。 JMPD同时估计目标状态和目标数量。在本文中,我们基于粒子过滤技术给出了JMPD的新的无网格实现,并探索了几种粒子提议策略,重采样技术和粒子多样化方法。我们从轨道丢失,均方误差和计算负担的角度报告了这些技术对跟踪器性能的影响。

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