基于惯性传感器和气压计的安全相关运动活动的贝叶斯识别

K. Frank, Estefania Munoz Diaz, P. Robertson, Francisco Javier Fuentes Sanchez
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引用次数: 18

摘要

在过去的几年里,活动识别一直是研究的热点。在或多或少合适的系统设计中,行走,站立,坐着或躺着的检测或多或少有信心。然而,这些系统都没有进入日常生活,无论是在大众市场还是在专业环境中。所需要的是一个不引人注目的系统,需要很少的资源,最重要的是,高度自信地承认所有重要的活动。为此,我们的研究重点是安全相关应用的专业市场:急救人员或军事用途。除了经典的运动相关活动外,我们的系统还支持室内和室外各种运动所必需的三维运动。这些活动包括跌倒、扭动、爬行、上下爬楼梯和使用电梯。我们已经证明了这种方法可以实时运行,只需要一个附着在身体上的无线传感器,同时实现鲁棒可靠的识别,延迟低于两秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian recognition of safety relevant motion activities with inertial sensors and barometer
Activity recognition has been a hot topic in research throughout the last years. Walking, standing, sitting or lying have been detected with more or less confidence, in more or less suitable system designs. None of these systems however has entered daily life, neither in mass market, nor in professional environments. What is required is an unobtrusive system, requiring few resources and - most important - recognizing all important activities with high confidence. To this end, our research has focused on the professional market for safety related applications: first responders or also military use. Next to the classical motion related activities, our system supports motions in three dimensions that are necessary for all kinds of movements indoors as well as outdoors. These include falling, wriggling, crawling, climbing stairs up and down and using an elevator. We have proven this approach to run in real-time with only a single wireless sensor attached to the body while achieving robust and reliable recognition with a delay lower than two seconds.
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