DocumentCode :
3562968
Title :
Automated decomposition of needle EMG signal using STFT and wavelet transforms
Author :
Yousefi, Hamed ; Askari, Shahbaz ; Dumont, Guy A. ; Bastany, Zoya
Author_Institution :
Sch. of Electr. & Comput. Eng., Univ. of Tehran, Tehran, Iran
fYear :
2014
Firstpage :
358
Lastpage :
363
Abstract :
We present an automated method for decomposing EMG signals into their components, motor-unit action-potential (MUAP) trains based on short time Fourier transform STFT and wavelet transform. Since the number of MUAP classes composing the EMG signal, the number of MUAP´s per class, their firing pattern, and the expected shape of the MUAP waveforms are unknown, the decomposition of real EMG signals into their constituent MUAP´s and their classification into groups of similar shapes is a typical case of an unsupervised learning pattern recognition problem. The method is able to handle single-or multi-channel signals, recorded by concentric needle electrodes during low and moderate levels of muscular contraction. The method uses empirical features in STFT transform, shape and template of MU and CWT in order to decompose the signal to its original MUAP. Also the discrete wavelet transform has been acquired in early steps in order to eliminate the level of low amplitude noise in signal. We compare the output of the automated algorithm with manual decomposition and results seems quiet acceptable. The average success rate for the FCM with wavelet coefficients as features was 91.01 %.
Keywords :
Fourier transforms; biomedical electrodes; discrete wavelet transforms; electromyography; feature extraction; fuzzy set theory; medical signal processing; pattern clustering; signal classification; unsupervised learning; Fuzzy C-means clustering; STFT; amplitude noise; automated decomposition; concentric needle electrodes; discrete wavelet transform; electromyography; empirical features; firing pattern; motor-unit action-potential trains; multichannel signals; muscular contraction; needle EMG signal; short time Fourier transform; single-channel signals; unsupervised learning pattern recognition problem; wavelet coefficients; Biomedical engineering; Decision support systems; Educational institutions; Government; FCM clustering; MU decomposition; motor unit action potential; segmentation; spectrogram; wavelet transform;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Biomedical Engineering (ICBME), 2014 21th Iranian Conference on
Print_ISBN :
978-1-4799-7417-7
Type :
conf
DOI :
10.1109/ICBME.2014.7043951
Filename :
7043951
Link To Document :
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