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Decentralized Gaussian Filters for Cooperative Self-Localization and Multi-Target Tracking

机译:分布式高斯滤波器,用于协作式自定位和多目标跟踪

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Scalable and decentralized algorithms for Cooperative Self-localization (CS) of agents, and Multi-Target Tracking (MTT) are important in many applications. In this work, we address the problem of Simultaneous Cooperative Self-localization and Multi-Target Tracking (SCS-MTT) under target data association uncertainty, i.e., the associations between measurements and target tracks are unknown. Existing CS and tracking algorithms either make the assumption of no data association uncertainty or employ a hard-decision rule for measurement-to-target associations. We propose a novel decentralized SCS-MTT method for an unknown and time-varying number of targets under association uncertainty. Marginal posterior densities for agents and targets are obtained by an efficient belief propagation (BP) based scheme while data association is handled by marginalizing over all target-to-measurement association probabilities. Decentralized single Gaussian and Gaussian mixture implementations are provided based on average consensus schemes, which require communication only with one-hop neighbors. An additional novelty is a decentralized Gibbs mechanism for efficient evaluation of the product of Gaussian mixtures. Numerical experiments show the improved CS and MTT performance compared to the conventional approach of separate localization and target tracking.
机译:在许多应用中,代理的协作式自定位(CS)和多目标跟踪(MTT)的可伸缩和分散算法很重要。在这项工作中,我们解决了在目标数据关联不确定性(即测量值与目标轨道之间的关联未知)下的同时合作自定位和多目标跟踪(SCS-MTT)问题。现有的CS和跟踪算法要么假设没有数据关联不确定性,要么对测量到目标关联采用硬决策规则。我们针对关联不确定性下未知且时变数量的目标提出了一种新型的分散式SCS-MTT方法。代理和目标的边际后验密度是通过基于有效信念传播(BP)的方案获得的,而数据关联则通过边际化所有目标与测量的关联概率来处理。基于平均共识方案提供了分散的单个高斯和高斯混合实现,该方案仅需要与一跳邻居进行通信。另一个新奇之处是用于有效评估高斯混合物产物的分散式吉布斯机制。数值实验表明,与传统的单独定位和目标跟踪方法相比,CS和MTT性能有所提高。

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