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Detection of targets using distributed multi-modal sensors with correlated observations

机译:使用具有相关观测值的分布式多模式传感器检测目标

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Multiple unattended ground sensors (UGSs) equipped with seismic, passive infrared (PIR) and ultrasonic sensors are used to detect and track people for better situational awareness. The majority of the false alarms are caused by animals. We fuse the detections of individual sensors at each node using algorithms based on the Neyman-Pearson criteria to achieve the required false alarm rate with the assumption that the sensor observations are independent. However, the sensors are observing the same phenomenon and hence the observations are not independent. In this paper, we explore the joint probability distributions between the sensors using copulas to improve the detection statistics. We identify several copula functions suitable for fusing the data in order to improve the detection statistics.
机译:多个配备有地震,被动红外(PIR)和超声传感器的无人值守地面传感器(UGS)用于检测和跟踪人员,以更好地了解情况。大多数错误警报是由动物引起的。我们使用基于Neyman-Pearson标准的算法在每个节点上融合单个传感器的检测,以达到所需的误报率,并假设传感器的观测是独立的。但是,传感器正在观察相同的现象,因此观察不是独立的。在本文中,我们探索了使用copulas的传感器之间的联合概率分布,以提高检测统计量。我们确定了几种适合于融合数据的copula函数,以改善检测统计数据。

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