Smartphone-based fall detection algorithm using feature extraction

Yu-Wei Hsu, Kuang-Hsuan Chen, Jing-Jung Yang, F. Jaw
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引用次数: 28

Abstract

The danger of falling among the elderly is a public concern and is becoming an important issue that needs further attention. Sensors embedded in smartphones provide information about user activity, such as the accelerometer which is widely used in fall detection. In this paper, we propose a fall detection algorithm which is formed by feature extraction processing and recognition processing. A total of six features were calculated in feature extraction processing. Four of them are related to the gravity vector which is extracted from accelerometer data by using low-pass filtering. As falling mostly occurs in a vertical direction, the gravity-related features are useful. In recognition processing, a set of six features was clustered by support vector machine. The main feature - acceleration in the gravity vector direction - contains the vertical directional information and provides a distinct pattern of fall-related activity. This feature acts as a trigger-key in recognition processing to avoid false alarms which lead to excessive computation. The results show that our algorithm could achieve a sensitivity of 96.67% and specificity of 95%.
基于智能手机的特征提取跌倒检测算法
老年人摔倒的危险是一个公众关注的问题,正在成为一个需要进一步关注的重要问题。嵌入智能手机的传感器可以提供用户活动的信息,比如被广泛用于跌倒检测的加速度计。本文提出了一种由特征提取处理和识别处理组成的跌倒检测算法。在特征提取处理中,共计算了6个特征。其中四个与重力矢量有关,重力矢量是通过低通滤波从加速度计数据中提取出来的。由于坠落主要发生在垂直方向,因此与重力相关的特征是有用的。在识别处理中,使用支持向量机对6个特征进行聚类。主要特征-重力矢量方向上的加速度-包含垂直方向信息,并提供与跌倒相关的活动的独特模式。该特性在识别处理中起到触发键的作用,避免误报导致计算量过大。结果表明,该算法的灵敏度为96.67%,特异性为95%。
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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