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Hybrid feature selection for myoelectric signal classification using mica

journal contribution
posted on 2024-11-01, 07:05 authored by Ganesh R Naik, Dinesh KumarDinesh Kumar
This paper presents a novel method to enhance the performance of Independent Component Analysis (ICA) of myoelectric signal by decomposing the signal into components originating from different muscles. First, we use Multi run ICA (MICA) algorithm to separate the muscle activities. Pattern classification of the separated signal is performed in the second step with a back propagation neural network. The focus of this work is to establish a simple, yet robust system that can be used to identify subtle complex hand actions and gestures for control of prosthesis and other computer assisted devices. Testing was conducted using several single shot experiments conducted with five subjects. The results indicate that the system is able to classify four different wrist actions with near 100 % accuracy

History

Journal

Journal of Electrical Engineering-Elektrotechnicky Casopis

Volume

61

Issue

2

Start page

93

End page

99

Total pages

7

Publisher

Slovenska Technicka Univerzita, Fakulta Elektrotechniky a Informatiky

Place published

Slovakia

Language

English

Copyright

© 2010 FEI STU

Former Identifier

2006019335

Esploro creation date

2020-06-22

Fedora creation date

2010-11-19