聚合地震、声学和振动传感器输出以增强威胁检测性能和估计威胁级别

A. Yousefi, A. Dibazar, T. Berger
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引用次数: 1

摘要

本文介绍了一种提高资产保护性能的传感器融合技术。该融合技术将声波、地震和振动传感器的输出结合起来,对保护区的活动动态进行建模。该算法学习保护区内潜在的正常活动;并检测异常活动-使用传感器输出可能的威胁。智能围栏中的活动学习是随着时间的推移而进化的,它不依赖于对威胁模型的先验假设。针对货运列车防护的仿真结果表明,可能威胁检测的准确率超过98%,比单纯检测技术提高至少3%。在机场和军事基地等大范围区域的活动动态可以使用所提出的融合技术进行建模,其中威胁检测的计算复杂度不显著。该方法随时间调整其自由参数的能力使威胁检测过程对现有环境和活动动态变化具有鲁棒性。
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Aggregating seismic, acoustic and vibration sensor outputs for enhancing threat detection performance and estimating threat-level
In this paper, a sensor fusion technique with enhanced performance in assets' protection is introduced. The presented fusion technique models activity dynamics in the protected area by combining acoustic, seismic and vibration sensors outputs. The proposed algorithm learns underlying normal activities in the protected area; and detects abnormal activities — possible threat using sensor outputs. The activity learning in the smart fence evolves through time, and it is independent of prior assumption of threat models. The simulation result developed for cargo train protection shows more than 98% performance in possible threat detection, which performs at least 3% better than naive detection technique. Activity dynamics in large scale areas — airports and military basis — can be modeled using the proposed fusion technique, in which the computational complexity for threat detection is not significant. The capability of the methodology to adjust its free parameters through time makes the threat detection process robust to existing environmental and activity dynamics changes.
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