Detecting the presence of persons and estimating their quantity in an indoor environment has grown in importance recently. For example, the information if a room is unoccupied can be used for automatically switching off the light, air conditioning, and ventilation, thereby saving significant amounts of energy in public buildings. Most existing solutions rely on dedicated hardware installations, which involve presence sensors, video cameras, and carbon dioxide sensors. Unfortunately, such approaches are costly, are subject to privacy concerns, have high computational requirements, and lack ubiquitousness. The work presented in this article addresses these limitations by proposing a low-cost occupancy detection system. Our approach builds upon detecting variations in Bluetooth Low Energy (BLE) signals related to the presence of humans. The effectiveness of this approach is evaluated by performing comprehensive tests on five different datasets. We apply several pattern recognition models and compare our methodology with systems building upon IEEE 802.11 (WiFi). On average, in multifarious environments, we can correctly classify the occupancy with an accuracy of 97.97%. When estimating the number of people in a room, on average, the estimated number of subjects differs from the actual one by 0.32 persons. We conclude that our system's performance is comparable to that of existing ones based on WiFi, while significantly reducing cost and installation effort. Hence, our approach makes occupancy detection practical for real-world deployments.
翻译:例如,如果一个房间无人占用,可以用来自动关闭灯光、空调和通风,从而节省公共建筑的大量能源; 多数现有解决办法依靠专用硬件装置,其中包括现场传感器、摄像头和二氧化碳传感器; 不幸的是,这类办法费用高昂,需要隐私考虑,计算要求很高,而且缺乏普遍性; 本条所述工作通过提出低成本占用探测系统来解决这些限制。 我们的方法建立在探测蓝牙低能(BlueToth)中与人类存在有关的信号的差异的基础上。通过对五种不同的数据集进行全面测试来评估这一方法的有效性。 我们采用几种模式识别模型,并将我们的方法与IEEEE 802.11(WiFi)系统建立起来的系统进行比较。平均而言,在多种环境中,我们可以准确地将占用率分类为97.97%。在估计一个房间的人数时,平均估计的主体数目与实际部署量的不同,而实际部署量则比实际部署量低0.32人。 我们的结论是,实际部署率要比实际部署率要低0.32,而实际部署率要低一个。