Sensor Management with Regional Statistics for the PHD Filter

Marian Andrecki, E. Delande, J. Houssineau, Daniel E. Clark
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引用次数: 3

Abstract

This paper investigates a sensor management scheme that aims at minimising the regional variance in the number of objects present in regions of interest whilst performing multi-target filtering with the PHD filter. The experiments are conducted in a simulated environment with groups of targets moving through a scene in order to inspect the behaviour of the manager. The results demonstrate that computing the variance in the number of objects in different regions provides a viable means of increasing situational awareness where complete coverage is not possible. A discussion follows, highlighting the limitations of the PHD filter and discussing the applicability of the proposed method to alternative available approaches in multi-object filtering.
基于区域统计的PHD滤波器传感器管理
本文研究了一种传感器管理方案,该方案旨在最小化感兴趣区域中存在的物体数量的区域方差,同时使用PHD滤波器进行多目标滤波。实验是在一个模拟的环境中进行的,有一组目标在一个场景中移动,以检查管理者的行为。结果表明,在不可能完全覆盖的情况下,计算不同区域中物体数量的变化提供了一种增加态势感知的可行方法。接下来的讨论,强调了PHD滤波器的局限性,并讨论了所提出的方法在多目标滤波中替代可用方法的适用性。
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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