Approximate multisensor CPHD and PHD filters

R. Mahler
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引用次数: 103

Abstract

The probability hypothesis density (PHD) filter and cardinalized probability hypothesis density (CPHD) filter are principled approximations of the general multitarget Bayes recursive filter. Both filters are single-sensor filters. Since their multisensor generalizations are computationally intractable, a further approximation - iterating their corrector equations, once for each sensor - has been used instead. This approach is theoretically unpleasing because it is not invariant under reordering of the sensors, and because it is implicitly based on strong simplifying assumptions. The purpose of this paper is to derive multisensor PHD and CPHD filters that (1) are invariant under sensor reordering, (2) require much weaker simplifying assumptions, and (3) are potentially computationally tractable (at least in the case of the multisensor CPHD filter).
近似多传感器CPHD和PHD滤波器
概率假设密度(PHD)滤波器和基数概率假设密度(CPHD)滤波器是一般多目标贝叶斯递归滤波器的基本近似。两个滤波器都是单传感器滤波器。由于它们的多传感器泛化在计算上是难以处理的,因此使用了一种进一步的近似方法——对每个传感器迭代一次校正方程。这种方法在理论上是不令人满意的,因为它在传感器的重新排序下不是不变的,而且因为它隐含地基于强简化假设。本文的目的是推导出(1)在传感器重排序下不变的多传感器PHD和CPHD滤波器,(2)需要更弱的简化假设,以及(3)可能在计算上易于处理(至少在多传感器CPHD滤波器的情况下)。
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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