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Multi-channel surface EMG classification using support vector machines and signal-based wavelet optimization
Authors:Marie-Fran  oise Lucas, Adrien Gaufriau, Sylvain Pascual, Christian Doncarli,Dario Farina
Affiliation:

aInstitut de Recherche en Communication et Cybernétique de Nantes (IRCCyN), Nantes Cedex, France

bCenter for Sensory-Motor Interaction (SMI), Department of Health Science and Technology, Aalborg University, Fredrik Bajers Vej 7 D-3, DK-9220 Aalborg, Denmark

Abstract:The study proposes a method for supervised classification of multi-channel surface electromyographic signals with the aim of controlling myoelectric prostheses. The representation space is based on the discrete wavelet transform (DWT) of each recorded EMG signal using unconstrained parameterization of the mother wavelet. The classification is performed with a support vector machine (SVM) approach in a multi-channel representation space. The mother wavelet is optimized with the criterion of minimum classification error, as estimated from the learning signal set. The method was applied to the classification of six hand movements with recording of the surface EMG from eight locations over the forearm. Misclassification rate in six subjects using the eight channels was (mean ± S.D.) 4.7 ± 3.7% with the proposed approach while it was 11.1 ± 10.0% without wavelet optimization (Daubechies wavelet). The DWT and SVM can be implemented with fast algorithms, thus, the method is suitable for real-time implementation.
Keywords:Multi-resolution analysis   Wavelet design   Multi-channel signal classification   Support vector machine   Electromyography   Myoelectric prostheses
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