DocumentCode
30504
Title
Surface EMG Decomposition Based on K -means Clustering and Convolution Kernel Compensation
Author
Yong Ning ; Xiangjun Zhu ; Shanan Zhu ; Yingchun Zhang
Author_Institution
Coll. of Electr. Eng., Zhejiang Univ., Hangzhou, China
Volume
19
Issue
2
fYear
2015
fDate
Mar-15
Firstpage
471
Lastpage
477
Abstract
A new approach has been developed by combining the K-mean clustering (KMC) method and a modified convolution kernel compensation (CKC) method for multichannel surface electromyogram (EMG) decomposition. The KMC method was first utilized to cluster vectors of observations at different time instants and then estimate the initial innervation pulse train (IPT). The CKC method, modified with a novel multistep iterative process, was conducted to update the estimated IPT. The performance of the proposed K-means clustering-Modified CKC (KmCKC) approach was evaluated by reconstructing IPTs from both simulated and experimental surface EMG signals. The KmCKC approach successfully reconstructed all 10 IPTs from the simulated surface EMG signals with true positive rates (TPR) of over 90% with a low signal-to-noise ratio (SNR) of -10 dB. More than 10 motor units were also successfully extracted from the 64-channel experimental surface EMG signals of the first dorsal interosseous (FDI) muscles when a contraction force was held at 8 N by using the KmCKC approach. A “two-source” test was further conducted with 64-channel surface EMG signals. The high percentage of common MUs and common pulses (over 92% at all force levels) between the IPTs reconstructed from the two independent groups of surface EMG signals demonstrates the reliability and capability of the proposed KmCKC approach in multichannel surface EMG decomposition. Results from both simulated and experimental data are consistent and confirm that the proposed KmCKC approach can successfully reconstruct IPTs with high accuracy at different levels of contraction.
Keywords
biomedical electrodes; convolution; data mining; electromyography; matrix decomposition; medical signal detection; medical signal processing; pattern clustering; vector quantisation; 64-channel experimental surface EMG signals; 64-channel surface EMG signals; FDI muscle contraction force; IPT estimation; IPT reconstruction; IPT signal-to-noise ratio; IPT true positive rates; K-mean clustering method; K-means clustering-based EMG decomposition; K-means clustering-modified CKC approach; KMC method utilization; KmCKC approach capability; KmCKC approach performance evaluation; KmCKC approach reliability; KmCKC approach-reconstructed IPT; KmCKC approach-reconstructed innervation pulse train; dorsal interosseous muscle contraction force; estimated IPT update; experimental surface electromyography signal; initial innervation pulse train estimation; innervation pulse train SNR; innervation pulse train TPR; modified convolution kernel compensation; motor unit extraction; multichannel surface EMG decomposition; multichannel surface electromyogram; multistep iterative process-modified CKC method; muscle contraction level; simulated surface EMG signal; simulated surface electromyography signal; surface electromyography decomposition; time instant-derived observation cluster vectors; two-source test; Accuracy; Convolution; Electromyography; Force; Muscles; Signal to noise ratio; Surface reconstruction; Convolution kernel compensation (CKC); K-means clustering; convolution kernel compensation (CKC); innervation pulse train (IPT); motor unit; surface EMG;
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/JBHI.2014.2328497
Filename
6824163
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