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Centralized Multiple-View Information Fusion for Multi-Object Tracking Using Labeled Multi-Bernoulli Filters

机译:集中式多视图信息融合,使用标记的多伯努利滤波器进行多目标跟踪

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In many applications, the states of an unknown number of objects need to be estimated using measurements that are acquired from multiple sensors with different fields of view. When object labels are part of their states, the problem is called the multi-sensor multi-object tracking problem. This paper presents a new solution for statistical fusion of multisensor information in such problems where the sensors form a centralized network. Assuming that a labeled multi-Bernoulli (LMB) filter is running at each sensor node, we suggest a new approach to fuse the multiple LMB posteriors in a centralized manner. The fused posterior is designed to incorporate all the information provided by multiple sensor nodes for each object label. Numerical experiments involving challenging multi-sensor multi-object tracking scenarios show that the proposed method outperforms the state of the art.
机译:在许多应用中,需要使用从具有不同视场的多个传感器获取的测量值来估计未知数量的对象的状态。当对象标签是其状态的一部分时,该问题称为多传感器多对象跟踪问题。本文提出了一种新的解决方案,用于在传感器形成集中式网络的情况下对多传感器信息进行统计融合。假设在每个传感器节点处都运行着标记的多伯努利(LMB)过滤器,我们建议一种新的方法以集中方式融合多个LMB后代。融合后部设计用于合并每个对象标签的多个传感器节点提供的所有信息。涉及具有挑战性的多传感器多对象跟踪方案的数值实验表明,所提出的方法优于现有技术。

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