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Locating optimized feature points of human pulse based on support vector regression

机译:基于支持向量回归定位人脉冲优化特征点

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Traditional Chinese Pulse Diagnosis (TCPD), one of the four diagnostic methods of Traditional Chinese Medicine (TCM), had been proved to be clinically valid in Chinese Medicine history. But traditional pulse diagnosis is subjective and deficient in quantitative criteria of diagnosis, which affects the reliability and repeatability of pulse diagnosis. Therefore, quantitative methods are needed to classify pulse signal. Pulse strength (PS) is the synthetical reflection of pulse force and its changing tread, and is hard to be represented by one or several characteristic parameters. Accordingly, the selection of feature points is more complicated. In this paper, a novel feature point extraction method was proposed for pulse waveform based on wavelet support vector regression (MWSVR). Support vector points were defined as pulse feature point. It cans not only representing the change of pulse signals at the same time also can reduced data sets via SVR. The experimental data was divided into three groups according to different surface pressure and each group has 4000 samples were used by training in literature. The experimental result shows that the proposed method is the validity and the usability in locating feature point of pulse signal.
机译:中国传统脉冲诊断(TCPD)是中国中医(TCM)的四种诊断方法之一,已被证明在中医历史中临床上有效。但传统的脉冲诊断是诊断定量标准的主观性和缺陷,这影响了脉冲诊断的可靠性和可重复性。因此,需要定量方法来对脉冲信号进行分类。脉冲强度(PS)是脉冲力的综合反射及其变化的胎面,并且很难通过一个或多个特征参数表示。因此,特征点的选择更复杂。本文提出了一种基于小波支持向量回归(MWSVR)的脉搏波形的新特征点提取方法。支持向量点被定义为脉冲特征点。它不能同时表示脉冲信号的变化也可以通过SVR减少数据集。根据不同的表面压力,将实验数据分为三组,每组通过文献训练使用4000个样品。实验结果表明,所提出的方法是定位特征点的有效性和可用性。

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