Target maneuver detection using a particle filter with spawn model and particle labeling

Julian Hörst
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Abstract

This paper presents a novel single target particle filter with spawn model and particle labeling approach, abbreviated SL-PF. The purpose of this filter is to detect instantaneously occurring target maneuvers, e.g. course changes of maritime targets, and to provide accurate tracking performance before and after the maneuvers. The key idea is to borrow the spawn model from the probability hypothesis density (PHD) filter since this model is naturally suited for these kinds of maneuvers. Secondly, each particle in the filter carries a label which is updated in a systematic manner in the spawning step so that it is possible to recognize spawned particles representing a target maneuver. This provides an integrated maneuver detection procedure within the particle filter. Monte Carlo simulations verify the SL-PF approach and indicate a significant estimation accuracy improvement compared to a conventional particle filter.
基于刷出模型和粒子标记的粒子滤波目标机动检测
本文提出了一种基于衍生模型和粒子标记方法的单目标粒子滤波器,简称SL-PF。该滤波器的目的是检测瞬时发生的目标机动,如海上目标的航向变化,并在机动前后提供准确的跟踪性能。关键思想是从概率假设密度(PHD)过滤器中借用衍生模型,因为该模型自然适合于这些类型的操作。其次,过滤器中的每个粒子都带有一个标签,该标签在生成步骤中以系统的方式更新,以便能够识别代表目标机动的生成粒子。这在粒子滤波器中提供了一个集成的机动检测程序。蒙特卡罗模拟验证了SL-PF方法,并表明与传统粒子滤波器相比,该方法的估计精度有了显著提高。
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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