Title :
Classification of Simultaneous Movements Using Surface EMG Pattern Recognition
Author :
Young, Aaron J. ; Smith, Lauren H. ; Rouse, Elliott J. ; Hargrove, Levi J.
Author_Institution :
Rehabilitation Inst. of Chicago, Center for Bionic Med., Northwestern Univ., Chicago, IL, USA
Abstract :
Advanced upper limb prostheses capable of actuating multiple degrees of freedom (DOFs) are now commercially available. Pattern recognition algorithms that use surface electromyography (EMG) signals show great promise as multi-DOF controllers. Unfortunately, current pattern recognition systems are limited to activate only one DOF at a time. This study introduces a novel classifier based on Bayesian theory to provide classification of simultaneous movements. This approach and two other classification strategies for simultaneous movements were evaluated using nonamputee and amputee subjects classifying up to three DOFs, where any two DOFs could be classified simultaneously. Similar results were found for nonamputee and amputee subjects. The new approach, based on a set of conditional parallel classifiers was the most promising with errors significantly less ( p <; 0.05) than a single linear discriminant analysis (LDA) classifier or a parallel approach. For three-DOF classification, the conditional parallel approach had error rates of 6.6% on discrete and 10.9% on combined motions, while the single LDA had error rates of 9.4% on discrete and 14.1% on combined motions. The low error rates demonstrated suggest than pattern recognition techniques on surface EMG can be extended to identify simultaneous movements, which could provide more life-like motions for amputees compared to exclusively classifying sequential movements.
Keywords :
Bayes methods; electromyography; handicapped aids; medical signal processing; pattern recognition; prosthetics; signal classification; Bayesian theory; LDA classifier; advanced upper limb prostheses; life-like motions; low error rates; multi-DOF controllers; nonamputee subjects; simultaneous movements classification; single linear discriminant analysis; surface EMG pattern recognition; surface electromyography signals; three-DOF classification; Elbow; Electromyography; Error analysis; Pattern recognition; Prosthetics; Wrist; Electromyography (EMG); multi-DOF powered prosthesis classification; pattern recognition; simultaneous/coordinated movements; Algorithms; Artificial Limbs; Bayes Theorem; Electromyography; Female; Humans; Male; Pattern Recognition, Automated; Range of Motion, Articular; Signal Processing, Computer-Assisted;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2012.2232293