Generalized feature extraction for wrist pulse analysis from 1 d time series to 2 d matrix

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Generalized Feature Extraction for Wrist Pulse Analysis: From 1-D 1 Time Series to 2-D Matrix

Abstract: Traditional Chinese pulse diagnosis, known as an empirical science, depends on the subjective experience. Inconsistent diagnostic results may be obtained among different practitioners. A scientific way of studying the pulse should be to analyze the objectified fied wrist pulse waveforms. In recent years, many pulse acquisition platforms have been developed with the advances in sensor and computer technology. And the pulse diagnosis using pattern recognition theories is also increasingly attracting attentions. Th Though ough many literatures on pulse feature extraction have been published, they just handle the pulse signals as simple 1 1-D time series and ignore the information within the class. This paper presents a generalized method of pulse feature extraction, extending the feature dimension from 1-D D time series to 2-D 2 D matrix. The conventional wrist pulse features correspond to a particular case of the generalized models. The proposed method is validated through pattern classification on actual pulse records. Both quantitative tative and qualitative results relative to the 1-D 1 D pulse features are given through diabetes diagnosis. The experimental results show that the generalized 2 2D matrix feature is effective in extracting both the periodic and nonperiodic information. And it iss practical for wrist pulse analysis.


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