基于n扫描gm - phd的多目标跟踪新方法

Mahdi Yazdian Dehkordi, Z. Azimifar
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引用次数: 13

摘要

本文提出了一种基于gm -PHD的滤波器来替代PHD滤波器来估计多目标后验密度的一阶矩。GM-PHD滤波器利用高斯分量的加权和来估计目标状态。该过滤器及其最近的变体根据目标权重对目标进行状态提取。然而,由于不同的不确定性,如噪声观测、漏检、杂波或遮挡等,目标的权重会降低,在某些步骤中会丢失对目标的估计。在这项研究中,作者开发了一种简单有效的n扫描方法,该方法利用目标的权重历史来提高基于gm - phd的方法的性能。他们建议为每个高斯分量分配一个标签、一个权重历史和一个二元置信度指标,并及时传播它们。然后,他们解释了一种新的N扫描状态提取算法,该算法基于目标状态在最后N步中的历史来估计目标状态。为了研究所提出的n扫描方法的效率,将其应用于GM-PHD滤波器及其最近的几种变体。不同不确定度下的实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel N-scan GM-PHD-based approach for multi-target tracking
The GM-PHD-based filter has been proposed as an alternative of the PHD filter to estimate the first-order moment of the multi-target posterior density. The GM-PHD filter utilises a weighted summation of Gaussian components to estimate the target states. This filter and its recent variants perform state extraction of the targets based on the target weights. However, due to different uncertainties such as noisy observation, miss-detection, clutter or occlusion, the weight of a target is decreased and the estimation of the target is lost in some steps. In this study, the authors develop a simple and effective N-scan approach which employs the weight history of targets to improve the performance of the GM-PHD-based methods. They propose to assign a label, a weight history and a binary confidence indicator to each Gaussian component and propagate them in time. Then, they explain a novel N-scan state extraction algorithm to estimate the target states based on their histories in the N last steps. To study the efficiency of the proposed N-scan approach, it is applied on the GM-PHD filter as well as its several recent variants. The experimental results provided for various uncertainties show the effectiveness of the method.
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