Multiple-Target Tracking With Binary Proximity Sensors

J. Singh, R. Kumar, Upamanyu Madhow, S. Suri, R. Cagley
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引用次数: 39

Abstract

Recent work has shown that, despite the minimal information provided by a binary proximity sensor, a network of these sensors can provide remarkably good target tracking performance. In this article, we examine the performance of such a sensor network for tracking multiple targets. We begin with geometric arguments that address the problem of counting the number of distinct targets, given a snapshot of the sensor readings. We provide necessary and sufficient criteria for an accurate target count in a one-dimensional setting, and provide a greedy algorithm that determines the minimum number of targets that is consistent with the sensor readings. While these combinatorial arguments bring out the difficulty of target counting based on sensor readings at a given time, they leave open the possibility of accurate counting and tracking by exploiting the evolution of the sensor readings over time. To this end, we develop a particle filtering algorithm based on a cost function that penalizes changes in velocity. An extensive set of simulations, as well as experiments with passive infrared sensors, are reported. We conclude that, despite the combinatorial complexity of target counting, probabilistic approaches based on fairly generic models of trajectories yield respectable tracking performance.
基于二元接近传感器的多目标跟踪
最近的研究表明,尽管二进制接近传感器提供的信息很少,但这些传感器组成的网络可以提供非常好的目标跟踪性能。在本文中,我们研究了这种传感器网络跟踪多个目标的性能。我们从几何参数开始,在给定传感器读数快照的情况下,解决计算不同目标数量的问题。我们提供了在一维设置中精确目标计数的必要和充分的标准,并提供了一个贪婪算法来确定与传感器读数一致的最小目标数。虽然这些组合论点带来了基于给定时间的传感器读数的目标计数的困难,但它们通过利用传感器读数随时间的演变留下了准确计数和跟踪的可能性。为此,我们开发了一种基于代价函数的粒子滤波算法,该函数对速度变化进行惩罚。本文报道了一组广泛的模拟,以及被动红外传感器的实验。我们得出的结论是,尽管目标计数的组合复杂性,基于相当通用的轨迹模型的概率方法产生了可观的跟踪性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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