Validity of Biosignal Processing System based on Haar Transform in IoT Application

Yoonsu Shin, Jongseo Lee, Songkuk Kim
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Abstract

In the Internet of Things (IoT) era, people are very interested in wearable devices such as smart watches. These devices measure individual physiological time series such as blood pressure, heart rate, and EEG. With this functionality, people can check the status of their own health. This healthcare service usually sends individual physiological time series to remote clusters for calculation. A remote healthcare service is particularly necessary for patients suffering from chronic and urgent diseases such as cardiovascular disease. It is also necessary to predict urgent signals for proper treatment. One method to predict urgent signals is by clustering physiological time series and comparing the new physiological time series with the previous time series in a cluster. It means searching the time series similar to risk features. In other words, the detection and comparison of features in time series are important. Therefore, in this study, we propose a biosignal processing system based on the Haar transform of time series in IoT applications. We discuss the validity of this system according to various perspectives. The Haar transform of a time series reflects the trend of the time series; thus, we can recognize the trend of the time series more easily. In addition, we can reduce the storage size of the time series. This is especially helpful because the volume of a time series is massive in the IoT era. Although the reduction of information in a time series can distort the similarity accuracy, it does not distort it significantly.
基于Haar变换的生物信号处理系统在物联网应用中的有效性
在物联网(IoT)时代,人们对智能手表等可穿戴设备非常感兴趣。这些设备测量个体生理时间序列,如血压、心率和脑电图。有了这个功能,人们可以检查自己的健康状况。此医疗保健服务通常将个体生理时间序列发送到远程集群进行计算。远程保健服务对于患有心血管疾病等慢性病和急症的患者尤其必要。还需要预测紧急信号,以便进行适当的治疗。一种预测紧急信号的方法是将生理时间序列聚类,并将新的生理时间序列与之前的时间序列进行聚类比较。它意味着搜索与风险特征相似的时间序列。换句话说,时间序列中特征的检测和比较是很重要的。因此,在本研究中,我们提出了一种基于时间序列Haar变换的物联网应用生物信号处理系统。本文从多个角度对该制度的有效性进行了探讨。时间序列的哈尔变换反映了时间序列的变化趋势;因此,我们可以更容易地识别时间序列的趋势。此外,我们可以减少时间序列的存储大小。这尤其有用,因为在物联网时代,时间序列的量是巨大的。虽然时间序列中信息的减少会对相似度精度造成扭曲,但这种扭曲并不明显。
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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