智能环境中活动识别的数据挖掘框架

Chao Chen, Barnan Das, D. Cook
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引用次数: 67

摘要

近年来出现了智能环境技术,用于帮助人们进行日常生活和远程健康监测。在过去的几年里,人们在活动识别方面做了很多工作,这项技术不仅处于实验室的实验阶段,而且已经准备好大规模部署。在本文中,我们设计了一个数据挖掘框架,从智能家居环境中收集的传感器数据中提取有用的特征,并根据两种不同的特征选择标准选择最重要的特征,然后利用几种机器学习技术来识别活动。为了验证这些算法,我们使用了从居住在智能公寓测试台上的志愿者那里收集的真实传感器数据。我们比较了不同学习算法之间的性能,并分析了在智能家居中进行的两个不同组实验的预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data Mining Framework for Activity Recognition in Smart Environments
Recent years have witnessed the emergence of Smart Environments technology for assisting people with their daily routines and for remote health monitoring. A lot of work has been done in the past few years on Activity Recognition and the technology is not just at the stage of experimentation in the labs, but is ready to be deployed on a larger scale. In this paper, we design a data-mining framework to extract the useful features from sensor data collected in the smart home environment and select the most important features based on two different feature selection criterions, then utilize several machine learning techniques to recognize the activities. To validate these algorithms, we use real sensor data collected from volunteers living in our smart apartment test bed. We compare the performance between alternative learning algorithms and analyze the prediction results of two different group experiments performed in the smart home.
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