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Distributed Flooding-then-Clustering: A Lazy Networking Approach for Distributed Multiple Target Tracking

机译:分布式先淹后聚:分布式多目标跟踪的惰性网络方法

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We propose a straightforward but efficient networking approach to distributed multi-target tracking, which is free of ingenious target model design. We confront two challenges: One is from the lack of statistical knowledge about the target appearance/disappearance and movement, and about the sensors, e.g., the rates of clutter and misdetection; The other is from the severely limited computing and communication capability of the low-powered sensors, which may prevent them from running a full-fledged tracker/filter. To overcome these challenges, a flooding-then-clustering (FTC) approach is proposed which comprises two components: a distributed flooding scheme for iteratively sharing the measurements between sensors and a clustering-for-filtering approach for target detection and position estimation from the local aggregated measurements. We compare the FTC approach with cutting edge distributed probability hypothesis density (PHD) filters that are modeled with appropriate statistical knowledge about the target motion and the sensors. A series of simulation studies using either linear or nonlinear sensors, have been presented to verify the effectiveness of the FTC approach.
机译:我们提出了一种简单而有效的联网方法来进行分布式多目标跟踪,该方法无需精巧的目标模型设计。我们面临两个挑战:一是缺乏关于目标外观/消失和运动以及传感器的统计知识,例如杂波和误检率;另一个原因是低功率传感器的计算和通信能力受到严格限制,这可能会阻止它们运行成熟的跟踪器/滤波器。为了克服这些挑战,提出了一种先淹没群集(FTC)方法,该方法包括两个组件:一种用于在传感器之间迭代共享测量值的分布式淹没方案;以及一种用于局部检测和位置估计的聚类过滤方法汇总测量。我们将FTC方法与最先进的分布式概率假设密度(PHD)过滤器进行比较,这些过滤器使用有关目标运动和传感器的适当统计知识进行建模。提出了一系列使用线性或非线性传感器的仿真研究,以验证FTC方法的有效性。

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