Combining wearable device with machine learning for intelligent health detection

IF 0.5 Q4 TELECOMMUNICATIONS Internet Technology Letters Pub Date : 2023-02-01 DOI:10.1002/itl2.410
Yunhui Hao
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Abstract

The aging of the population gradually intensifies. The health status and medical problems of the elderly have aroused widespread concern in society. Wearable health monitoring system is a typical application of wearable computing in the medical field, which can achieve continuous and dynamic acquisition of human status under low physiological and psychological loads. Fall detection monitoring plays an important role in eldercare. This paper establishes a wearable health monitoring system for fall detection based on a three-axis accelerometer. First, the acceleration signals are collected through a three-axis accelerometer which is installed into a wearable device. Second, the collected acceleration signals are represented as 20 features, including mean of acceleration signal, SD of acceleration signal, coefficient Kurtosis, coefficient of skewness etc. Third, the acceleration signal features are used to learn a covariance-guided one-class support vector machine due to the difficulty to obtain fall acceleration signals. The experiments and simulations show the effectiveness of the proposed system for fall detection.

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将可穿戴设备与机器学习相结合,实现智能健康检测
人口老龄化逐渐加剧。老年人的健康状况和医疗问题引起了社会的广泛关注。可穿戴健康监测系统是可穿戴计算在医疗领域的典型应用,可以在低生理和心理负荷下实现对人体状态的连续动态采集。跌倒检测监测在老年人护理中起着重要的作用。本文建立了一种基于三轴加速度计的可穿戴式跌倒检测健康监测系统。首先,通过安装在可穿戴设备中的三轴加速度计收集加速度信号。其次,将采集到的加速度信号表示为20个特征,包括加速度信号均值、加速度信号SD、峭度系数、偏度系数等。第三,针对跌落加速度信号难以获取的问题,利用加速度信号特征学习协方差引导的一类支持向量机。实验和仿真结果表明了该系统对跌倒检测的有效性。
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