基于运动和智能手机技术的跌倒检测

Q. Vo, Gueesang Lee, Deokjai Choi
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引用次数: 61

摘要

当今,认识人类活动是一个重要的课题;它被广泛利用并应用于现实生活中的许多领域,特别是医疗保健或上下文感知应用。研究成果主要集中在日常生活活动方面,为医疗保健应用提供有益建议。跌倒事件是老年人健康和福祉的最大风险之一,特别是在独立生活中,因为跌倒事故可能由心脏病发作引起。认识这种活动仍然是一个困难的研究领域。已经提出了许多配备可穿戴传感器的系统,但如果用户忘记穿衣服或缺乏适应移动系统的能力而没有特定的可穿戴传感器,则这些系统将不起作用。本文在分析下落时加速度、方向变化的基础上,提出了一种新的方法。在这项研究中,我们招募了五名志愿者参与我们的实验,包括不同的秋季类别。结果对识别跌倒活动是有效的。我们的系统是在Google Android智能手机上实现的,该智能手机已经插入了加速度计和方向传感器。使用流行的手机从加速度计获取数据,结果表明我们的方法是可行的,并且对医疗保健中的跌倒检测有重要贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fall Detection Based on Movement and Smart Phone Technology
Nowadays, recognizing human activities is an important subject; it is exploited widely and applied to many fields in real-life, especially health care or context aware application. Research achievements are mainly focused on activities of daily living which are useful for suggesting advises to health care applications. Falling event is one of the biggest risks to the health and well being of the elderly especially in independent living because falling accidents may be caused from heart attack. Recognizing this activity still remains in difficult research area. Many systems which equip wearable sensors have been proposed but they are not useful if users forget to wear the clothes or lack ability to adapt themselves to mobile systems without specific wearable sensors. In this paper, we develop novel method based on analyzing the change of acceleration, orientation when the fall occurs. In this study, we recruit five volunteers in our experiment including various fall categories. The results are effective for recognizing fall activity. Our system is implemented on Google Android smart phone which already plugged accelerometer and orientation sensors. The popular phone is used to get data from accelerometer and results show the feasibility of our method and contribute significantly to fall detection in Health care.
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