一种用于扩展目标跟踪的连续概率起源关联滤波器

Philipp Berthold, Martin Michaelis, T. Luettel, D. Meissner, H. Wuensche
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引用次数: 0

摘要

扩展对象跟踪的一个主要挑战是将点测量与其在目标对象上的真实原点相关联。测量的原点通常在空间上分布在目标的整个范围内。将测量值与目标范围内的可能原点相关联是困难的,特别是对于每个目标仅提供少量测量值的低分辨率传感器。我们使用点测量与目标上的原点候选点的软关联来解决这个问题。因此,为每次测量计算不同可能起源的关联概率。在过滤步骤中,根据这些概率的概率对它们进行加权。我们也将这个过滤器扩展到连续而不仅仅是离散的关联可能性。这允许我们将点的测量值与线联系起来。本文概述了该滤波器的推导过程,并给出了三个示例应用。仿真比较了该方法与其他跟踪移动线的滤波技术的性能。讨论了滤波器向运动圆的传递问题。此外,我们还讨论了它在利用径向速度信息的基于多普勒雷达的探测关联中的应用。我们讨论了这种方法的优点和缺点,并给出了优化计算时间的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Continuous Probabilistic Origin Association Filter for Extended Object Tracking
One major challenge in extended object tracking is the association of a point measurement to its true origin on a target object. The origins of measurements are often spatially distributed over the full extent of the target. The association of measurements to the possible origins within the targets’ extent is difficult, especially for low-resolution sensors which provide only a few measurements per object. We address this using a soft association of a point measurement to its origin candidates on the target. Therefore, association probabilities to different possible origins are calculated for each measurement. These probabilities are weighted according to their probability in the filtering step. We also extend this filter to continuous and not just discrete association possibilities. This allows us to associate point measurements to lines.This paper outlines the derivation of the filter and gives three exemplary applications. A simulation compares the performance of this approach with other filter techniques for tracking a moving line. The transfer of the filter to a moving circle is discussed. Additionally, we discuss its usage for a Doppler-radar-based detection association which exploits the radial speed information. We discuss the advantages and the drawbacks of this approach and give recommendations for the optimization of computation time.
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