Developing a mobile phone-based fall detection system on Android platform

Shih-Hau Fang, Yi-Chung Liang, Kuan-Ming Chiu
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引用次数: 115

Abstract

Since todays smartphones are programmable and embed various sensors, these phones have the potential to change the way how healthcare is delivered. Fall detection is definitely one of the possibilities. Injuries due to falls are dangerous, especially for elderly people, diminishing the quality of life or even resulting in death. This study presents the implementation of a fall detection prototype for the Android-based platform. The proposed system has three components: sensing the accelerometer data from the mobile embedded sensors, learning the relationship between the fall behavior and the collected data, and alerting preconfigured contacts through message while detecting fall. We adopt different fall detection algorithms and conduct various experiments to evaluate performance. The results show that the proposed system can recognize the fall from human activities, such as sitting, walking and standing, with 72.22% sensitivity and 73.78% specificity. The experiment also investigates the impact of different locations where the phone attached. In addition, this study further analyzes the trade-off between sensitivity and specificity and discusses the additional power consumption of the devices.
在Android平台上开发基于手机的跌倒检测系统
由于今天的智能手机是可编程的,并嵌入了各种传感器,这些手机有可能改变医疗保健的提供方式。下落探测绝对是一种可能。跌倒造成的伤害是危险的,特别是对老年人来说,它会降低生活质量,甚至导致死亡。本研究提出了一个基于android平台的跌倒检测原型的实现。该系统由三个部分组成:感知来自移动嵌入式传感器的加速度计数据,学习跌倒行为与收集到的数据之间的关系,以及在检测跌倒时通过消息提醒预先配置的联系人。我们采用了不同的跌倒检测算法,并进行了各种实验来评估性能。结果表明,该系统能够识别人坐、行、站等活动引起的跌倒,灵敏度为72.22%,特异度为73.78%。该实验还调查了手机放置在不同位置的影响。此外,本研究进一步分析了灵敏度和特异性之间的权衡,并讨论了设备的额外功耗。
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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