Sensing Room Occupancy Levels with Signal-to-Noise Ratio and Signal Phase and Multiple Antenna Configurations

Jens Weppner, B. Bischke, Attila Reiss, R. Duerichen, P. Lukowicz
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Abstract

We propose a novel machine learning based method for estimating the number of people present in a room (e.g, in a shared office space) based on WiFi signal- to- noise ratio and signal phase data provided by WiFi Channel State Information compatible hardware. We apply random decision forests machine learning and show that the precise number of people can be estimated with a score of 0.66 and the occupancy levels (empty, low, high) with a score of 0.87 at an affordable cost. We evaluate our approach in two settings: one small room with 0–2 and in a medium-sized office space with 0–8 people performing their usual office desk work. Beyond determining maximum recognition rates we systematically investigate the impact of different design choices (antennas, training data) on system performance. The proposed method outperforms a statistical baseline method significantly.
用信噪比、信号相位和多天线配置感应房间占用水平
我们提出了一种新的基于机器学习的方法,基于WiFi信噪比和WiFi信道状态信息兼容硬件提供的信号相位数据来估计房间(例如共享办公空间)中的人数。我们应用随机决策森林机器学习,结果表明,在可承受的成本下,准确的人数可以用0.66的分数来估计,入住率(空的、低的、高的)可以用0.87的分数来估计。我们在两种环境中评估了我们的方法:一种是0-2人的小房间,另一种是0-8人的中型办公室。除了确定最大识别率之外,我们系统地研究了不同设计选择(天线,训练数据)对系统性能的影响。该方法明显优于统计基线方法。
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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