基于n扫描δ-广义标记多伯努利的多目标跟踪方法

M. H. Sepanj, Z. Azimifar
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引用次数: 0

摘要

提出了基于δ-GLMB的滤波器作为贝叶斯多目标跟踪的解析解。δ-GLMB滤波器具有各种加权GLMB分量,以估计目标状态。该过滤器根据每个GLMB分量的权重执行剪枝。然而,对于不同的不确定因素,例如噪声测量,GLMB分量的权重可能会降低,并且在某些步骤中会丢失该GLMB的轨迹。在本研究中,作者利用N个glmb权值的最后历史来提高δ-GLMB滤波器在更不确定条件下的性能。为了研究该方法的有效性,将其应用于一个仿真场景。实验结果表明,在更不确定的条件下,该方法有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
N-scan δ-generalized labeled multi-bernoulli-based approach for multi-target tracking
The δ-GLMB based filter has been proposed as an analytical solution to Bayesian multi-target trackers. The δ-GLMB filter has various weighted GLMB components in order to estimate target states. This filter performs pruning according to each GLMB component weight. However, with respect to different uncertainties for example noisy measurements, the weight of GLMB component may decreases and the track of that GLMB is lost in some steps. In this study, the author benefits from N last history of the GLMBs weight to enhance the performance of δ-GLMB filter in more uncertain conditions. To study the efficiency of the proposed method it is applied on a simulation scenario. The experimental results shows improvements in more uncertain conditions.
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