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基于小波的肌内肌电信号分解特征提取的比较分析

Comparative Analysis of Wavelet-based Feature Extraction for Intramuscular EMG Signal Decomposition.

作者信息

Ghofrani Jahromi M, Parsaei H, Zamani A, Dehbozorgi M

机构信息

Department of Medical Physics and Engineering, Shiraz University of Medical Sciences, Shiraz, Iran.

出版信息

J Biomed Phys Eng. 2017 Dec 1;7(4):365-378. eCollection 2017 Dec.

Abstract

BACKGROUND

Electromyographic (EMG) signal decomposition is the process by which an EMG signal is decomposed into its constituent motor unit potential trains (MUPTs). A major step in EMG decomposition is feature extraction in which each detected motor unit potential (MUP) is represented by a feature vector. As with any other pattern recognition system, feature extraction has a significant impact on the performance of a decomposition system. EMG decomposition has been studied well and several systems were proposed, but feature extraction step has not been investigated in detail.

OBJECTIVE

Several EMG signals were generated using a physiologically-based EMG signal simulation algorithm. For each signal, the firing patterns of motor units (MUs) provided by the simulator were used to extract MUPs of each MU. For feature extraction, different wavelet families including Daubechies (db), Symlets, Coiflets, bi-orthogonal, reverse bi-orthogonal and discrete Meyer were investigated. Moreover, the possibility of reducing the dimensionality of MUP feature vector is explored in this work. The MUPs represented using wavelet-domain features are transformed into a new coordinate system using Principal Component Analysis (PCA). The features were evaluated regarding their capability in discriminating MUPs of individual MUs.

RESULTS

Extensive studies on different mother wavelet functions revealed that db2, coif1, sym5, bior2.2, bior4.4, and rbior2.2 are the best ones in differentiating MUPs of different MUs. The best results were achieved at the 4th detail coefficient. Overall, rbior2.2 outperformed all wavelet functions studied; nevertheless for EMG signals composed of more than 12 MUPTs, syms5 wavelet function is the best function. Applying PCA slightly enhanced the results.

摘要

背景

肌电图(EMG)信号分解是将EMG信号分解为其组成运动单位电位序列(MUPTs)的过程。EMG分解的一个主要步骤是特征提取,其中每个检测到的运动单位电位(MUP)由一个特征向量表示。与任何其他模式识别系统一样,特征提取对分解系统的性能有重大影响。EMG分解已经得到了充分研究,并提出了几种系统,但特征提取步骤尚未得到详细研究。

目的

使用基于生理学的EMG信号模拟算法生成多个EMG信号。对于每个信号,模拟器提供的运动单位(MUs)放电模式用于提取每个MU的MUP。对于特征提取,研究了不同的小波族,包括Daubechies(db)、Symlets、Coiflets、双正交、反向双正交和离散Meyer小波。此外,本研究还探讨了降低MUP特征向量维度的可能性。使用主成分分析(PCA)将用小波域特征表示的MUP转换到一个新的坐标系中。对这些特征区分单个MU的MUP的能力进行了评估。

结果

对不同母小波函数的广泛研究表明,db2、coif1、sym5、bior2.2、bior4.4和rbior2.2在区分不同MU的MUP方面是最佳的。在第4个细节系数处取得了最佳结果。总体而言,rbior2.2的性能优于所有研究的小波函数;然而,对于由超过12个MUPT组成的EMG信号,syms5小波函数是最佳函数。应用PCA略微提高了结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a256/5758715/34839dfe53cd/JBPE-7-365-g001.jpg

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