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An Efficient, Variational Approximation of the Best Fitting Multi-Bernoulli Filter

机译:最佳拟合多伯努利滤波器的有效的变分近似

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摘要

The joint probabilistic data association (JPDA) filter is a popular tracking methodology for problems involving well-spaced targets, but it is rarely applied in problems with closely spaced targets due to its complexity in these cases, and due to the well-known phenomenon of coalescence. This paper addresses these difficulties using random finite sets (RFSs) and variational inference, deriving a highly tractable, approximate method for obtaining the multi-Bernoulli distribution that minimizes the set Kullback–Leibler (KL) divergence from the true posterior, working within the RFS framework to incorporate uncertainty in target existence. The derivation is interpreted as an application of expectation-maximization (EM), where the missing data is the correspondence of Bernoulli components (i.e., tracks) under each data association hypothesis. The missing data is shown to play an identical role to the selection of an ordered distribution in the same ordered family in the set JPDA algorithm. Subsequently, a special case of the proposed method is utilized to provide an efficient approximation of the minimum mean optimal subpattern assignment estimator. The performance of the proposed methods is demonstrated in challenging scenarios in which up to twenty targets come into close proximity.
机译:联合概率数据协会(JPDA)过滤器是一种针对目标间距较大的问题的流行跟踪方法,但由于在这些情况下其复杂性以及众所周知的现象,因此很少用于目标间距较近的问题。合并。本文使用随机有限集(RFS)和变分推论解决了这些困难,推导了一种高度易处理的近似方法来获得多重Bernoulli分布,该方法将集合Kullback-Leibler(KL)与真实后验的散度最小化,在RFS中工作将不确定性纳入目标存在的框架。该推导被解释为期望最大化(EM)的应用,其中丢失的数据是每个数据关联假设下伯努利分量(即轨道)的对应关系。所显示的缺失数据与在JPDA集算法中选择同一有序族中的有序分布起着相同的作用。随后,利用所提出方法的特殊情况来提供最小均值最佳子模式分配估计量的有效近似。在具有挑战性的场景中证明了所提出方法的性能,在该场景中多达20个目标非常接近。

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