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

机译:基于Haar变换的生物信号处理系统在IoT应用中的有效性。

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摘要

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.
机译:在物联网(IoT)时代,人们对​​诸如智能手表之类的可穿戴设备非常感兴趣。这些设备可测量各个生理时间序列,例如血压,心率和EEG。使用此功能,人们可以检查自己的健康状况。此医疗保健服务通常将各个生理时间序列发送到远程群集以进行计算。对于患有慢性和紧急疾病(如心血管疾病)的患者,远程医疗保健服务尤其必要。还必须预测紧急信号以进行适当治疗。预测紧急信号的一种方法是通过对生理时间序列进行聚类并将新的生理时间序列与聚类中的先前时间序列进行比较。这意味着搜索类似于风险特征的时间序列。换句话说,时间序列中特征的检测和比较很重要。因此,在这项研究中,我们提出了一种基于IoT应用中时间序列的Haar变换的生物信号处理系统。我们从各个角度讨论了该系统的有效性。时间序列的Haar变换反映了时间序列的趋势;因此,我们可以更轻松地识别时间序列的趋势。另外,我们可以减小时间序列的存储大小。这特别有用,因为在IoT时代,时间序列的数量巨大。尽管时间序列中信息的减少会扭曲相似度准确性,但不会显着扭曲相似度准确性。

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