Passive WiFi CSI Sensing Based Machine Learning Framework for COVID-Safe Occupancy Monitoring

Aryan Sharma, Junye Li, Deepak Mishra, G. Batista, Aruna Seneviratne
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引用次数: 16

Abstract

The COVID-19 pandemic requires social distancing to prevent transmission of the virus. Monitoring social distancing is difficult and expensive, especially in "travel corridors" such as elevators and commercial spaces. This paper describes a low-cost and non-intrusive method to monitor social distancing within a given space, using Channel State Information (CSI) from passive WiFi sensing. By exploiting the frequency selective behaviour of CSI with a cubic SVM classifier, we count the number of people in an elevator with an accuracy of 92%, and count the occupancy of an office to 97%. As opposed to using a multi-class counting approach, this paper aggregates CSI for the occupancies below and above a COVID-Safe limit. We show that this binary classification approach to the COVID safe decision problem has similar or better accuracy outcomes with much lower computational complexity, allowing for real-world implementation on IoT embedded devices. Robustness and scalability is demonstrated through experimental validation in practical scenarios with varying occupants, different environment settings and interference from other WiFi devices.
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基于被动WiFi CSI传感的新冠病毒安全占用监测机器学习框架
COVID-19大流行需要保持社会距离,以防止病毒传播。监测社交距离既困难又昂贵,特别是在电梯和商业空间等“旅行走廊”。本文描述了一种低成本、非侵入性的方法,利用被动WiFi感知的信道状态信息(CSI)来监测给定空间内的社交距离。通过利用三次支持向量机分类器的频率选择行为,我们以92%的准确率计算电梯中的人数,并以97%的准确率计算办公室的占用率。与使用多类计数方法不同,本文对低于和高于COVID-Safe限制的入住率汇总CSI。我们表明,这种针对COVID安全决策问题的二元分类方法具有相似或更好的准确性结果,且计算复杂性低得多,允许在物联网嵌入式设备上实现现实世界。鲁棒性和可扩展性通过实验验证,在不同的居住者、不同的环境设置和其他WiFi设备的干扰的实际场景中得到验证。
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