环境特征提取和分类的上下文感知体育活动监测

G. M. Pour, P. Troped, J. Evans
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引用次数: 10

摘要

情境感知身体活动(PA)监测对于研究与肥胖和缺乏身体活动相关的疾病非常重要。本文介绍了一种可穿戴式情境感知PA监控设备,该设备可以在全球定位系统(GPS)接收中断的情况下确定用户是在室内还是室外。除了一个GPS传感器,我们的PA监控装置还增加了多个光和温度传感器。室内外温度和光照强度的差异被用来区分所处的环境。在1月和2月的20天内,采用受控路线记录位置、光照和温度值。利用一种非参数模式识别技术(k近邻)基于传感器值的组合对室内和室外条件进行分类。结果表明,k近邻算法能够区分白天和夜间的室内和室外条件,误差为0.003。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Environment feature extraction and classification for Context aware Physical Activity monitoring
Context aware Physical Activity (PA) monitoring of humans is important for the study of diseases associated with obesity and lack of physical activity. This paper introduces a wearable context aware PA monitoring device which determines if the user is indoors or outside in situations of disrupted Global Positioning System (GPS) reception. In addition to a GPS sensor, multiple light and temperature sensors were added to our PA monitoring device. Differences in inside and outside temperature and the intensity of light are used to distinguish the context of location. Location, Light and temperature values were recorded using a controlled route during a period of 20 days in January and February. One of the non-parametric pattern recognition techniques (K-nearest neighbors) was used to classify indoor and outdoor conditions based on the combination of sensor values. Results show that the K-nearest neighbors algorithm could distinguish indoor and outdoor conditions during daytime and nighttime with the error of 0.003.
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