Introducing knowledge in the process of supervised classification of activities of Daily Living in Health Smart Homes

A. Fleury, N. Noury, Michel Vacher
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引用次数: 22

Abstract

Telemedicine and Telemonitoring of elderly people is an actual challenge that is explored to prevent some problems linked to the constant growing of the mean age of the population. It requires to recognize the behavior and the actions of a person inside his own home with non-intrusive sensors and to process data to check the evolution of the person. Activities of Daily Living can be learned and automatically recognized using supervised classification on sensor data. This paper presents the results of the study of prior introduction, in Support Vector Machine, to improve this automatic recognition of Activities of Daily Living. We started from a set of data acquired in daily life during an experimentation in the Health Smart Home of the TIMC-IMAG Lab. From this restricted set of data, we obtained models for seven activities of Daily Living and test, with leave-one-out method, the performance of this classification. This first step gave baseline results that this paper tends to improve using consistent priors to compute more specific and accurate models of the different activities that are learned and obtain better results on the leave-one-out method on the sensors data.
在健康智能家居日常生活活动的监督分类过程中引入知识
老年人远程医疗和远程监护是为防止人口平均年龄不断增长所带来的一些问题而探索的一项现实挑战。它需要用非侵入式传感器识别一个人在自己家里的行为和行动,并处理数据来检查这个人的演变。日常生活活动可以通过对传感器数据的监督分类来学习和自动识别。本文介绍了在支持向量机中先验介绍的研究成果,以改进这种日常生活活动的自动识别。我们从TIMC-IMAG实验室的健康智能家居实验中获得的一组日常生活数据开始。从这组有限的数据中,我们得到了七种日常生活活动的模型,并用留一法检验了该分类的性能。这第一步给出了基线结果,本文倾向于使用一致的先验来改进,以计算学习到的不同活动的更具体和更准确的模型,并在传感器数据的留一方法上获得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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