Decomposition of MES using wavelet transform and support vector machine

Alejandro P. L. Marquez, M. Roberto
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引用次数: 1

Abstract

This paper involves the development of a semiautomatic system for the decomposition from myoelectric signals (MES) in their essential components, motor unit action potential (MUAP). Using tools of analysis (wavelet analysis) and classification (support vector machines) for signal processing. The purpose of the decomposition is to obtain the largest number of MUAPs and their features to evaluate the performance of the muscle. It has healthy intramuscular records, sampled at 10 kHz for 10 seconds. The MUAP are selected by calculating the wavelet transform. With the help of the sampling rate and the duration of potentials, some MUAPs are selected to serve as patterns of each family in the classification. Using support vector machines the MUAPs are classified in the different families resulting from the previous step. Finally, firing rates are calculated for each family
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利用小波变换和支持向量机对MES进行分解
本文介绍了一种从肌电信号(MES)的基本成分运动单位动作电位(MUAP)分解的半自动系统的开发。使用分析工具(小波分析)和分类工具(支持向量机)进行信号处理。分解的目的是获得最大数量的muap及其特征,以评估肌肉的性能。它有健康的肌肉内记录,以10khz采样10秒。通过计算小波变换来选择MUAP。利用采样率和电位持续时间,选择一些muap作为分类中每个科的模式。使用支持向量机将muap分类到前一步产生的不同族中。最后,计算每个家庭的射击率
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