COVID-Safe Spatial Occupancy Monitoring Using OFDM-Based Features and Passive WiFi Samples

Junye Li, Aryan Sharma, Deepak Mishra, Gustavo E. A. P. A. Batista, A. Seneviratne
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引用次数: 15

Abstract

During the COVID-19 pandemic, authorities have been asking for social distancing to prevent transmission of the virus. However, enforcing such distancing has been challenging in tight spaces such as elevators and unmonitored commercial settings such as offices. This article addresses this gap by proposing a low-cost and non-intrusive method for monitoring social distancing within a given space, using Channel State Information (CSI) from passive WiFi sensing. By exploiting the frequency selective behavior of CSI with a Support Vector Machine (SVM) classifier, we achieve an improvement in accuracy over existing crowd counting works. Our system counts the number of occupants with a 93% accuracy rate in an elevator setting and predicts whether the COVID-Safe limit is breached with a 97% accuracy rate. We also demonstrate the occupant counting capability of the system in a commercial office setting, achieving 97% accuracy. Our proposed occupancy monitoring outperforms existing methods by at least 7%. Overall, the proposed framework is inexpensive, requiring only one device that passively collects data and a lightweight supervised learning algorithm for prediction. Our lightweight model and accuracy improvements are necessary contributions for WiFi-based counting to be suitable for COVID-specific applications.
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基于ofdm特征和无源WiFi样本的新型冠状病毒安全空间占用监测
在2019冠状病毒病大流行期间,当局一直要求保持社会距离,以防止病毒传播。然而,在电梯等狭小空间和办公室等不受监控的商业环境中,实施这种距离一直是一项挑战。本文提出了一种低成本、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,从而解决了这一差距。通过使用支持向量机(SVM)分类器利用CSI的频率选择行为,我们实现了比现有人群计数工作精度的提高。我们的系统在电梯设置中以93%的准确率计算乘员人数,并以97%的准确率预测是否违反了COVID-Safe限制。我们还在商业办公环境中演示了该系统的乘员计数能力,准确率达到97%。我们建议的入住率监测比现有方法至少高出7%。总的来说,所提出的框架价格低廉,只需要一个被动收集数据的设备和一个轻量级的监督学习算法进行预测。我们的轻量级模型和准确性改进是基于wifi的计数适用于特定covid应用的必要贡献。
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