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A phd Filter for Tracking Multiple Extended Targets Using Random Matrices

机译:使用随机矩阵跟踪多个扩展目标的phd过滤器

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摘要

This paper presents a random set based approach to tracking of an unknown number of extended targets, in the presence of clutter measurements and missed detections, where the targets' extensions are modeled as random matrices. For this purpose, the random matrix framework developed recently by Koch is adapted into the extended target phd framework, resulting in the Gaussian inverse Wishart phd (giw-phd) filter. A suitable multiple target likelihood is derived, and the main filter recursion is presented along with the necessary assumptions and approximations. The particularly challenging case of close extended targets is addressed with practical measurement clustering algorithms. The capabilities and limitations of the resulting extended target tracking framework are illustrated both in simulations and in experiments based on laser scans.
机译:本文提出了一种基于随机集的方法,用于在存在杂波测量和丢失检测的情况下跟踪未知数量的扩展目标,其中目标的扩展被建模为随机矩阵。为此,将科赫最近开发的随机矩阵框架改编为扩展目标phd框架,从而生成了高斯逆Wishart phd(giw-phd)滤波器。得出合适的多目标似然,并给出主滤波器递归以及必要的假设和近似值。通过实际的测量聚类算法可以解决接近扩展目标的特别具有挑战性的情况。在模拟和基于激光扫描的实验中都说明了所得扩展目标跟踪框架的功能和局限性。

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