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Performance Analysis of two Sequential Monte Carlo Methods and Posterior Cramér-Rao Bounds for Multi-Target Tracking

机译:两种顺序蒙特卡罗方法和后Cramér-Rao边界用于多目标跟踪的性能分析

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摘要

The multi-target tracking algorithms generally present two basic ingredients: - an estimation algorithm coupled with a data association method. In the last years, the use of sequential Monte Carlo methods has grown in many application domains and in particular in target tracking. The state distribution is then estimated with a finite weighted sum of Dirac laws centered around "particles". Very recently, two new algorithms based on sequential Monte Carlo methods have been proposed independently to solve multi-target tracking. The first one solves the data association as in the Joint Probabilistic Data Association (jpdaf) spirit whereas the second uses independent probabilistic assignments. In this paper, we first compare their performance for bearings-only applications. Then, we study how the posterior Cramér-Rao bound, giving a lower bound on the estimation error covariance, can be obtained for multiple targets. Three new bounds are obtained according to the data association assumptions and are evaluated for bearings-only scenarios.
机译:多目标跟踪算法通常呈现两个基本要素:-估计算法与数据关联方法相结合。在过去的几年中,顺序蒙特卡洛方法的使用在许多应用领域,尤其是在目标跟踪中得到了增长。然后使用以“粒子”为中心的狄拉克定律的有限加权总和来估计状态分布。最近,独立提出了两种基于顺序蒙特卡洛方法的新算法来解决多目标跟踪问题。第一个解决了联合概率数据协会(jpdaf)精神中的数据关联,而第二个则使用了独立的概率分配。在本文中,我们首先比较它们在纯轴承应用中的性能。然后,我们研究如何为多个目标获得后Cramér-Rao界,给出估计误差协方差的下界。根据数据关联假设,获得了三个新界限,并针对纯方位情景进行了评估。

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