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AR-Alarm: An Adaptive and Robust Intrusion Detection System Leveraging CSI from Commodity Wi-Fi

机译:AR-Alarm:利用商品Wi-Fi的CSI的自适应鲁棒入侵检测系统

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Device-free human intrusion detection holds great potential and multiple challenges for applications ranging from asset protection to elder care. In this paper, leveraging the fine-grained Channel State Information (CSI) in commodity WiFi devices, we design and implement an adaptive and robust human intrusion detection system, called AR-Alarm. By utilizing a robust feature and self-adaptive learning mechanism, AR-Alarm achieves real-time intrusion detection in different environments without calibration efforts. To further increase the system robustness, we propose a few novel methods to distinguish real human intrusion from object motion in daily life such as object dropping, curtain swinging and pets moving. As demonstrated in the experiments, AR-Alarm achieves a high detection rate and low false alarm rate.
机译:无需设备的人为入侵检测在从资产保护到老年护理的应用中具有巨大的潜力和多重挑战。在本文中,我们利用商用WiFi设备中的细粒度通道状态信息(CSI),设计并实现了一种自适应的,健壮的人类入侵检测系统,称为AR-Alarm。通过利用强大的功能和自适应学习机制,AR-Alarm无需校准即可在不同环境中实现实时入侵检测。为了进一步提高系统的鲁棒性,我们提出了一些新颖的方法来区分现实中的人类入侵与物体运动,例如物体掉落,窗帘摆动和宠物移动。如实验所示,AR-Alarm实现了较高的检测率和较低的虚警率。

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