A particle filter for target arrival detection and tracking in Track-Before-Detect

A. Lepoutre, O. Rabaste, F. Gland
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引用次数: 9

Abstract

In this paper, we address the problem of detecting the appearance time of a target and tracking its state with a particle filter in the Track-Before-Detect context. We show that it is possible to model the problem as a quickest detection change problem in a Bayesian framework. In this case, the posterior density of the target time appearance is a mixture where each component represents the hypothesis that the target arrived at a given time. As the posterior density is intractable in practice, we propose to approximate each component of the mixture by a particle filter, and we show that the weights of the mixture can be computed recursively thanks to quantities provided by the different particle filters. The overall filter yields good performance.
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Track-Before-Detect中用于目标到达检测和跟踪的粒子滤波器
在本文中,我们解决了在Track-Before-Detect上下文中使用粒子滤波检测目标的出现时间并跟踪其状态的问题。我们表明,在贝叶斯框架中,可以将问题建模为最快检测变化问题。在这种情况下,目标时间出现的后验密度是一个混合物,其中每个分量代表目标在给定时间到达的假设。由于后验密度在实践中是难以处理的,我们建议用粒子滤波器来近似混合物的每个成分,并且我们表明,由于不同粒子滤波器提供的数量,混合物的权重可以递归计算。整体过滤器产生良好的性能。
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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Simultaneous localization and mapping for non-parametric potential field environments Multisensor traffic mapping filters Track maintenance using the SMC-intensity filter Creating a likelihood vector for ground moving targets in the exo-clutter region of airborne radar signals A particle filter for target arrival detection and tracking in Track-Before-Detect
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