Real time target tracking with binary sensor networks and parallel computing

Hong Lin, J. Rushing, S. Graves, S. Tanner, E. Criswell
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引用次数: 16

Abstract

A parallel real time data fusion and target tracking algorithm for very large binary sensor networks is presented. A binary sensor can give an on or off signal to indicate the presence or absence of targets within its range, but it cannot tell how many targets are present, where the targets are, how fast they are moving, or which direction they are heading. In order to detect and track targets using these sensors, it is necessary to fuse information from more than one sensor. A parallel data fusion process based on simulated annealing is used to identify and locate targets. Processing is performed on a commodity Linux cluster with communication between nodes facilitated by the Message Passing Interface (MPI). The fusion and tracking algorithm is tested with a wide variety of sensor network parameters using target track data from a theater level air combat simulation. It is demonstrated that very accurate target detection and localization are possible even though the binary sensors themselves provide little information and have high error rates. Real time tracking is performed on a network with 2.5 million sensors on a commodity cluster with only 50 processors.
基于二元传感器网络和并行计算的实时目标跟踪
针对超大型二值传感器网络,提出了一种并行实时数据融合与目标跟踪算法。二进制传感器可以发出开或关的信号来指示其范围内目标的存在或不存在,但它不能告诉有多少目标存在,目标在哪里,它们移动的速度有多快,或者它们朝哪个方向前进。为了利用这些传感器检测和跟踪目标,需要融合多个传感器的信息。采用基于模拟退火的并行数据融合方法对目标进行识别和定位。处理在商品Linux集群上执行,节点之间通过消息传递接口(Message Passing Interface, MPI)进行通信。利用战区级空战仿真的目标航迹数据,在多种传感器网络参数下对融合跟踪算法进行了测试。结果表明,尽管二元传感器本身提供的信息很少,误差率高,但仍然可以实现非常精确的目标检测和定位。实时跟踪是在一个拥有250万个传感器的网络上执行的,而商品集群只有50个处理器。
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