Wireless intelligent fall detection and movement classification using fuzzy logic

W. Putchana, S. Chivapreecha, T. Limpiti
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引用次数: 11

Abstract

Global population aging leads to increased interests in preventive healthcare technology. As falls are the most common cause of injury or death in old persons, fall detection and movement classification is one of the key topics in this research area. In this paper we propose a simple wireless intelligent system prototype for fall detection and movement classification for real-time monitoring of the elderly. The portable sensor unit acquires data from a triaxial accelerometer and sends the data wirelessly to a computer using Zigbee technology. Alternative to classic methods, the movement data is analyzed using a fuzzy inference system. The system is designed to distinguish between four movement types: standing, sitting, forward fall, and backward fall. Its classification accuracy is investigated using experimental data. It is observed that the system performs well with high sensitivity and excellent specificity. Additionally, the system is applicable for monitoring rehabilitative patients and is extendable to a larger class of movements and postures.
基于模糊逻辑的无线智能跌倒检测与运动分类
全球人口老龄化导致对预防保健技术的兴趣增加。由于跌倒是老年人最常见的伤害或死亡原因,因此跌倒检测和运动分类是该研究领域的关键问题之一。在本文中,我们提出了一个简单的无线智能系统原型,用于跌倒检测和运动分类,用于老年人的实时监测。便携式传感器单元从三轴加速度计获取数据,并使用Zigbee技术将数据无线发送到计算机。与传统方法不同,本文采用模糊推理系统对运动数据进行分析。该系统旨在区分四种运动类型:站立、坐着、向前跌倒和向后跌倒。利用实验数据对其分类精度进行了研究。结果表明,该系统具有较高的灵敏度和特异性。此外,该系统适用于监测康复患者,并可扩展到更大类别的动作和姿势。
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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