使用物联网设备间接检测人类存在的机器学习方法

R. Madeira, Luís Nunes
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引用次数: 17

摘要

本文描述了一个系统的构建,该系统使用来自多个家庭自动化设备的信息来检测设备所在空间中是否有人存在。然而,这种检测并不依赖于明确检测人类存在的设备的信息,比如运动探测器或智能摄像头。所使用的信息是Muzzley系统中可用的信息,Muzzley系统是一个移动应用程序,允许从一个程序监视和控制几种类型的设备。所提供的信息在源头上是匿名的。第一步是为这个问题提取足够的特征。根据所有可用的信息,包括但不限于直接存在检测器,引入了一个标记步骤,使用启发式的组合来断言任何人在给定时间在家的可能性。该解决方案主要依赖于使用监督学习算法来训练模型,该模型可以在没有任何基于直接存在检测器的信息的情况下检测存在。该模型应该能够检测用户在家时的使用模式,而不是仅仅依赖于直接传感器。结果表明,在这种情况下检测是困难的,但我们相信这些结果揭示了一些可能的途径,以提高系统的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning approach for indirect human presence detection using IOT devices
This paper describes the construction of a system that uses information from several home automation devices, to detect the presence of a person in the space where the devices are located. The detection however doesn't rely on the information of devices that explicitly detect human presence, like motion detectors or smart cameras. The information used is the one available in the Muzzley system, which is a mobile application that allows the monitoring and control of several types of devices from a single program. The provided information was anonymized at the source. The first step was to extract adequate features for this problem. A labeling step is introduced using a combination of heuristics to assert the likelihood of anyone being home at a given time, based on all information available, including, but not limited to, direct presence detectors. The solution rests mainly on the use of supervised learning algorithms to train models that detect the presence without any information based on direct presence detectors. The model should be able to detect patterns of usage when the owner is at home rather than rely only on direct sensors. Results show that detection in this context is difficult, but we believe these results shed some light on possible paths to improve the system's accuracy.
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