Sensor fusion for intrusion detection under false alarm constraints

Matthew Pugh, J. Brewer, Jacques Kvam
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引用次数: 9

Abstract

Sensor fusion algorithms allow the combination of many heterogeneous data types to make sophisticated decisions. In many situations, these algorithms give increased performance such as better detectability and/or reduced false alarm rates. To achieve these benefits, typically some system or signal model is given. This work focuses on the situation where the event signal is unknown and a false alarm criterion must be met. Specifically, the case where data from multiple passive infrared (PIR) sensors are processed to detect intrusion into a room while satisfying a false alarm constraint is analyzed. The central challenge is the space of intrusion signals is unknown and we want to quantify analytically the probability of false alarm. It is shown that this quantification is possible by estimating the background noise statistics and computing the Mahalanobis distance in the frequency domain. Using the Mahalanobis distance as the decision metric, a threshold is computed to satisfy the false alarm constraint.
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虚警约束下的传感器融合入侵检测
传感器融合算法允许许多异构数据类型的组合来做出复杂的决策。在许多情况下,这些算法可以提高性能,例如更好的可检测性和/或降低误报率。为了实现这些好处,通常会给出一些系统或信号模型。本工作主要针对事件信号未知且必须满足虚警条件的情况。具体来说,分析了在满足虚警约束的情况下,对多个被动红外(PIR)传感器的数据进行处理以检测入侵房间的情况。主要的挑战是入侵信号的空间是未知的,我们想要量化分析虚警的概率。结果表明,通过估计背景噪声统计量和计算频域马氏距离,可以实现这种量化。以马氏距离为决策度量,计算满足虚警约束的阈值。
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