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Occupancy Detection and People Counting Using WiFi Passive Radar

机译:占用检测和使用WiFi被动雷达计数的人

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Occupancy detection and people counting technologies have important uses in many scenarios ranging from management of human resources, optimising energy use in intelligent buildings and improving public services in future smart cities. Wi-Fi based sensing approaches for these applications have attracted significant attention in recent years because of their ubiquitous nature, and ability to preserve the privacy of individuals being counted. In this paper, we present a Passive Wi-Fi Radar (PWR) technique for occupancy detection and people counting. Unlike systems which exploit the Wi-Fi Received Signal Strength (RSS) and Channel State Information (CSI), PWR systems can directly be applied in any environment covered by an existing WiFi local area network without special modifications to the Wi-Fi access point. Specifically, we apply Cross Ambiguity Function (CAF) processing to generate Range-Doppler maps, then we use Time-Frequency transforms to generate Doppler spectrograms, and finally employ a CLEAN algorithm to remove the direct signal interference. A Convolutional Neural Network (CNN) and sliding-window based feature selection scheme is then used for classification. Experimental results collected from a typical office environment are used to validate the proposed PWR system for accurately determining room occupancy, and correctly predict the number of people when using four test subjects in experimental measurements.
机译:占用检测和人数计数技术在许多情况下具有重要用途,从管理人力资源管理,优化智能建筑中的能源使用,并在未来的智能城市中提高公共服务。基于Wi-Fi的传感方法对于这些应用来说,近年来由于其无处不在的性质,以及保留所估计个人隐私的能力而引起了重大关注。在本文中,我们为占用检测和人数展示了一种被动Wi-Fi雷达(PWR)技术。与利用Wi-Fi接收信号强度(RSS)和信道状态信息(CSI)的系统不同,PWR系统可以直接应用于现有WiFi局域网覆盖的任何环境,而不对Wi-Fi接入点进行特殊修改。具体地,我们应用交叉模糊函数(CAF)处理来生成范围 - 多普勒映射,然后我们使用时频变换来生成多普勒频谱图,最后采用清洁算法来消除直接信号干扰。然后使用卷积神经网络(CNN)和基于滑动窗口的特征选择方案进行分类。从典型办公环境中收集的实验结果用于验证所提出的PWR系统,以便准确确定房间占用,并在实验测量中使用四个测试对象时正确预测人数。

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