使用时间使用移动传感器数据:一条实用的移动活动识别之路?

Marko Borazio, Kristof Van Laerhoven
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引用次数: 16

摘要

拥有能够发现用户正在进行的活动的移动设备,已被认为是一种有吸引力的方式,以减轻与这些平台的交互,并已被确定为一种有前途的工具,例如医疗监测。虽然初步研究的结果是有希望的,但研究人员倾向于使用高采样率,以获得足够的识别率与各种传感器。目前尚未得到充分研究的是,如何将并非来自传感器、而是存在于时间使用调查等庞大数据库中的信息整合到这一系统中。我们使用这些统计信息结合移动加速度数据来确定11个活动。我们展示了传感器和时间调查信息是如何合并的,我们对17个不同用户在14天内的连续昼夜活动数据进行了评估,得出了228天的数据集。我们总结了一系列的观察结果,包括使用统计数据有特别好处的活动类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using time use with mobile sensor data: a road to practical mobile activity recognition?
Having mobile devices that are capable of finding out what activity the user is doing, has been suggested as an attractive way to alleviate interaction with these platforms, and has been identified as a promising instrument in for instance medical monitoring. Although results of preliminary studies are promising, researchers tend to use high sampling rates in order to obtain adequate recognition rates with a variety of sensors. What is not fully examined yet, are ways to integrate into this the information that does not come from sensors, but lies in vast data bases such as time use surveys. We examine using such statistical information combined with mobile acceleration data to determine 11 activities. We show how sensor and time survey information can be merged, and we evaluate our approach on continuous day-and-night activity data from 17 different users over 14 days each, resulting in a data set of 228 days. We conclude with a series of observations, including the types of activities for which the use of statistical data has particular benefits.
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