Track decoupling: linear joint IPDA (LJIPDA) and multi-target linear IPDA (MLIPDA)

D. Musicki, R. Evans
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引用次数: 3

Abstract

This paper presents a new approach to multi-target tracking. Rather than forming complex hypotheses based on all possible combinations of measurement origins, we attempt to decouple individual tracks based on the probabilities of measurement origins. Two such algorithms, both based on the IPDA algorithm, are presented in this paper. One, which we call linear joint IPDA (LJIPDA), recalculates IPDA using the probabilities of measurement origin. The other, which we call multitarget linear IPDA (MLIPDA), uses the probabilities of measurement origin to modify IPDA results. Both algorithms are recursive and yield formulae for both data association and probability of track existence. Simulations were carried out to compare these algorithms with IPDA in a dense and non-homogenous clutter situation.
航迹解耦:线性联合IPDA (LJIPDA)和多目标线性IPDA (MLIPDA)
本文提出了一种新的多目标跟踪方法。我们不是基于测量起源的所有可能组合形成复杂的假设,而是尝试基于测量起源的概率来解耦单个轨迹。本文提出了两种基于IPDA算法的算法。一种是利用测量原点的概率重新计算IPDA,我们称之为线性联合IPDA (LJIPDA)。另一种称为多目标线性IPDA (MLIPDA),它使用测量原点的概率来修改IPDA结果。这两种算法都是递归的,并给出了数据关联和航迹存在概率的公式。在密集非均匀杂波情况下,将这些算法与IPDA算法进行了仿真比较。
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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