Multitarget association and tracking in 3-D space based on particle filter with joint multitarget probability density

Jinseok Lee, Byung Guk Kim, S. Cho, Sangjin Hong, W. Cho
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引用次数: 2

Abstract

This paper addresses the problem of 3-dimensional (3D) multitarget tracking using particle filter with the joint multitarget probability density (JMPD) technique. The estimation allows the nonlinear target motion with unlabeled measurement association as well as non-Gaussian target state densities. In addition, we decompose the 3D formulation into multiple 2D particle filters that operate on the 2D planes. Both selection and combining of the 2D particle filters for 3D tracking are presented and discussed. Finally, we analyze the tracking and association performance of the proposed approach especially in the cases of multitarget crossing and overlapping.
基于联合多目标概率密度粒子滤波的三维空间多目标关联与跟踪
本文研究了结合联合多目标概率密度(JMPD)技术的粒子滤波三维多目标跟踪问题。该估计允许具有非标记测量关联的非线性目标运动和非高斯目标状态密度。此外,我们将3D公式分解为多个在2D平面上运行的2D粒子过滤器。提出并讨论了用于三维跟踪的二维粒子滤波器的选择和组合。最后,分析了该方法在多目标交叉和重叠情况下的跟踪和关联性能。
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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