AudioGuard:使用音频设备的全方位室内入侵检测

Tianben Wang, Zhangben Li, Honghao Yan, Xiantao Liu, Boqin Liu, Shengjie Li, Zhongyu Ma, Jin Hu, Daqing Zhang, Tao Gu
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引用次数: 0

摘要

室内入侵检测是家庭安全的一项重要任务。以往的入侵检测工作存在非视距区域盲点、设备位置受限、需要大量离线训练、隐私问题等问题。本文设计并实现了一种全向室内入侵检测系统AudioGuard,该系统仅使用一对扬声器和麦克风。AudioGuard能够检测视线(LOS)和非视线(NLOS)入侵。我们对声信号在室内环境中的传播进行了观察,发现室内环境中存在着丰富的多径反射,人体运动引起了回波信号的多普勒频移。通过捕获入侵者行走运动引起的周期性多普勒频移来检测入侵。具体来说,我们首先提取回波信号中的多普勒频移,然后提出一种周期性极化方法来抵消径向角和距离变化对多普勒频移周期性的影响。最后,我们通过测量多普勒频移随时间的周期性来检测入侵。大量实验表明,AudioGuard对LOS和NLOS入侵的漏报率分别为0%和1.75%,虚警率为4.17%。
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AudioGuard: Omnidirectional Indoor Intrusion Detection Using Audio Device
Indoor intrusion detection is a critical task for home security. Previous works in intrusion detection suffer from the problems such as blind spots in non-line-of-sight (NLOS) areas, restricted device locations, massive offline training required, and privacy concern. In this paper, we design and implement an omnidirectional indoor intrusion detection system, named AudioGuard , using only a pair of speaker and microphone. AudioGuard is able to detect both line-of-sight (LOS) and NLOS intrusions. Our observation of acoustic signal propagation in an indoor environment shows that there exist abundant multipath reflections and human movement introduces Doppler shift in echo signals. We hence capture periodical Doppler shift caused by intruder's walking motion to detect intrusion. Specifically, we first extract the Doppler shift embedded in echo signals, we then propose a periodicity polarization method to cancel out the impact of the change of radial angle and the distance on periodicity of Doppler shift. Finally, we detect intrusion by measuring periodicity of Doppler shift over time. Extensive experiments show that AudioGuard achieves a miss report rate of 0% and 1.75% for LOS and NLOS intrusion, respectively, and a false alarm rate of 4.17%.
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