GA-based Feature Subset Selection for Myoelectric Classification

Published: Jan 1, 2006
Abstract
This paper presents an ongoing investigation to select optimal subset of features from set of well-known myoelectric signals (MES) features in time and frequency domains. Four channel of myoelectric signal from upper limb muscles are used in this paper to classify six distinctive activities. Cascaded genetic algorithm (GA) has been adopted as the search strategy in feature subset selection. Davies-Bouldin index (DBI) and Fishers linear...
Paper Details
Title
GA-based Feature Subset Selection for Myoelectric Classification
Published Date
Jan 1, 2006
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