Predicting room occupancy with a single passive infrared (PIR) sensor through behavior extraction

Yordan P. Raykov, Emre Ozer, Ganesh S. Dasika, A. Boukouvalas, Max A. Little
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引用次数: 104

Abstract

Passive infrared sensors have widespread use in many applications, including motion detectors for alarms, lighting systems and hand dryers. Combinations of multiple PIR sensors have also been used to count the number of humans passing through doorways. In this paper, we demonstrate the potential of the PIR sensor as a tool for occupancy estimation inside of a monitored environment. Our approach shows how flexible nonparametric machine learning algorithms extract useful information about the occupancy from a single PIR sensor. The approach allows us to understand and make use of the motion patterns generated by people within the monitored environment. The proposed counting system uses information about those patterns to provide an accurate estimate of room occupancy which can be updated every 30 seconds. The system was successfully tested on data from more than 50 real office meetings consisting of at most 14 room occupants.
单被动红外(PIR)传感器通过行为提取预测房间占用率
被动红外传感器在许多应用中都有广泛的应用,包括报警器、照明系统和烘干机的运动探测器。多个PIR传感器的组合也被用来计算通过门口的人数。在本文中,我们展示了PIR传感器作为监测环境内占用估计工具的潜力。我们的方法展示了灵活的非参数机器学习算法如何从单个PIR传感器中提取有关占用的有用信息。这种方法使我们能够理解和利用被监测环境中人们产生的运动模式。拟议的计数系统利用有关这些模式的信息,对房间占用情况作出准确估计,每30秒更新一次。该系统成功地测试了50多个真实办公室会议的数据,其中最多有14个房间的占用者。
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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