DocumentCode
9909
Title
Support Vector Regression for Improved Real-Time, Simultaneous Myoelectric Control
Author
Ameri, Alireza ; Kamavuako, Ernest N. ; Scheme, Erik J. ; Englehart, Kevin B. ; Parker, Philip A.
Author_Institution
Dept. of Electr. & Comput. Eng., Univ. of New Brunswick, Fredericton, NB, Canada
Volume
22
Issue
6
fYear
2014
fDate
Nov. 2014
Firstpage
1198
Lastpage
1209
Abstract
This study describes the first application of a support vector machine (SVM) based scheme for real-time simultaneous and proportional myoelectric control of multiple degrees of freedom (DOFs). Three DOFs including wrist flexion-extension, abduction-adduction and forearm pronation-supination were investigated with 10 able-bodied subjects and two individuals with transradial limb deficiency (LD). A Fitts´ law test involving real-time target acquisition tasks was conducted to compare the usability of the SVM-based control system to that of an artificial neural network (ANN) based method. Performance was assessed using the Fitts´ law throughput value as well as additional metrics including completion rate, path efficiency and overshoot. The SVM-based approach outperformed the ANN-based system in every performance measure for able-bodied subjects. The SVM outperformed the ANN in path efficiency and throughput with the first LD subject and in throughput with the second LD subject. The superior performance of the SVM-based system appears to be due to its higher estimation accuracy of all DOFs during inactive and low amplitude segments (these periods were frequent during real-time control). Another advantage of the SVM-based method was that it substantially reduced the processing time for both training and real time control.
Keywords
electromyography; neural nets; prosthetics; regression analysis; support vector machines; Fitts law test; SVM-based control system; abduction-adduction; artificial neural network based method; forearm pronation-supination; multiple degrees of freedom; proportional myoelectric control; real-time simultaneous myoelectric control; support vector regression; transradial limb deficiency; wrist flexion-extension; Artificial neural networks; Electromyography; Prosthetics; Real-time systems; Support vector machines; Wrist; Amputee; electromyogram (EMG); myoelectric control; simultaneous control; support vector machines;
fLanguage
English
Journal_Title
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1534-4320
Type
jour
DOI
10.1109/TNSRE.2014.2323576
Filename
6817581
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