A Geophone Based Surveillance System Using Neural Networks and IoT

Supun Hettigoda, Chamath Jayaminda, Udayanga Amarathunga, Shiraz Thaha, M. Wijesundara, J. Wijekoon
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引用次数: 1

Abstract

Securing our assets and properties from intruders and thieves has become increasingly challenging as intruders become technology aware. The most common approach to monitor physical assets is CCTV. However, this approach has a number of technical limitations in addition to the cost. The CCTV camera location is visible to the intruder and intruder can also identify possible blind spots in the CCTV coverage area. In this paper, we introduce a novel method to secure physical assets using Geophones, Neural Networks, and IoT Platforms. This can either be used stand alone or to complement existing CCTV systems. In this approach, the system monitors vibrations on ground to detect intruders. We have achieved up to 93.90% overall accuracy for person identification. The system is invisible to intruders and covers a large area with a smaller number of nodes, thereby reducing the cost of ownership.
基于神经网络和物联网的检波器监控系统
随着入侵者的技术意识越来越强,保护我们的资产和财产免受入侵者和小偷的侵害变得越来越具有挑战性。监控实物资产最常用的方法是闭路电视。然而,除了成本之外,这种方法还有许多技术限制。闭路电视摄像机的位置对入侵者是可见的,入侵者也可以识别闭路电视覆盖区域内可能存在的盲点。在本文中,我们介绍了一种使用检波器、神经网络和物联网平台来保护物理资产的新方法。这既可以单独使用,也可以补充现有的闭路电视系统。在这种方法中,系统通过监测地面振动来探测入侵者。我们对人的识别达到了93.90%的总体准确率。该系统对入侵者来说是不可见的,并且覆盖面积大,节点数量少,从而降低了拥有成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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