DocumentCode
106295
Title
Linear and Nonlinear Regression Techniques for Simultaneous and Proportional Myoelectric Control
Author
Hahne, Janne M. ; Biebmann, Felix ; Jiang, N. ; Rehbaum, H. ; Farina, Dario ; Meinecke, F.C. ; Muller, Klaus-Robert ; Parra, L.C.
Author_Institution
Machine Learning Lab., Berlin Inst. of Technol., Berlin, Germany
Volume
22
Issue
2
fYear
2014
fDate
Mar-14
Firstpage
269
Lastpage
279
Abstract
In recent years the number of active controllable joints in electrically powered hand-prostheses has increased significantly. However, the control strategies for these devices in current clinical use are inadequate as they require separate and sequential control of each degree-of-freedom (DoF). In this study we systematically compare linear and nonlinear regression techniques for an independent, simultaneous and proportional myoelectric control of wrist movements with two DoF. These techniques include linear regression, mixture of linear experts (ME), multilayer-perceptron, and kernel ridge regression (KRR). They are investigated offline with electro-myographic signals acquired from ten able-bodied subjects and one person with congenital upper limb deficiency. The control accuracy is reported as a function of the number of electrodes and the amount and diversity of training data providing guidance for the requirements in clinical practice. The results showed that KRR, a nonparametric statistical learning method, outperformed the other methods. However, simple transformations in the feature space could linearize the problem, so that linear models could achieve similar performance as KRR at much lower computational costs. Especially ME, a physiologically inspired extension of linear regression represents a promising candidate for the next generation of prosthetic devices.
Keywords
data acquisition; electrochemical electrodes; electromyography; feature extraction; medical control systems; medical disorders; medical signal processing; multilayer perceptrons; prosthetics; regression analysis; able-bodied subjects; active controllable joints; congenital upper limb deficiency; degree-of-freedom; electrically powered hand-prostheses; electrodes; electromyographic signal acquisition; feature space; independent myoelectric control; kernel ridge regression; linear expert mixture; linear regression techniques; multilayer perceptron; nonlinear regression techniques; nonparametric statistical learning method; physiologically inspired extension; proportional myoelectric control; prosthetic devices; simultaneous myoelectric control; training data diversity; wrist movements; Electrodes; Electromyography; Kernel; Training; Training data; Trajectory; Wrist; Amputee; electromyography (EMG); hand prostheses; regression; simultaneous myoelectric control;
fLanguage
English
Journal_Title
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1534-4320
Type
jour
DOI
10.1109/TNSRE.2014.2305520
Filename
6742730
Link To Document