多模型盒粒子基数平衡多目标多伯努利滤波用于多机动目标跟踪

Feng Yang, Wanying Zhang, Yan Liang, Xiaoxu Wang, Linfeng Xu
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引用次数: 0

摘要

基数平衡多目标多伯努利(CBMeMBer)滤波在目标数量未知、杂波和虚警情况下的多目标跟踪中被证明是一种很有前途的方法。针对机动目标跟踪问题,采用跳跃马尔可夫模型(JMM)对CBMeMBer滤波进行扩展。然而,多模型CBMeMBer (MM-CBMeMBer)滤波器的标准粒子实现需要大量的粒子才能获得满意的性能。基于盒粒子滤波对受未知分布和偏差有界误差影响的测量结果的处理能力,提出了一种MM-CBMeMBer滤波的盒粒子实现。仿真结果表明,所提出的MM-Box-CBMeMBer滤波器可以获得与MM-Particle-CBMeMBer滤波器相似的精度结果,但大大减少了计算量。同时,在强偏测量存在的情况下,MM-Box-CBMeMBer滤波器优于MM-Particle-CBMeMBer滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple model box-particle cardinality balanced multi-target multi-Bernoulli filter for multiple maneuvering targets tracking
Cardinality balanced multi-target multi-Bernoulli (CBMeMBer) filter has been proved as a promising method in the context of multi-target tracking with an unknown number of targets, clutter and false alarms. For tracking maneuvering targets, the CBMeMBer filter has been extended by using jump Markov models (JMM). However, the standard particle implementation of the multiple model CBMeMBer (MM-CBMeMBer) filter requires a large number of particles in order to obtain a satisfactory performance. Based on the capability of box-particle filter to process measurements which are affected by bounded errors of unknown distributions and biases, a box-particle implementation of the MM-CBMeMBer filter is proposed. Simulation result shows that the proposed MM-Box-CBMeMBer filter can obtain similar accuracy results with a MM-Particle-CBMeMBer filter but considerably reduce the computational costs. Meanwhile, in the presence of strongly biased measurements, it is shown that the MM-Box-CBMeMBer filter is superior to the MM-Particle-CBMeMBer filter.
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