Authors
Hamid R Marateb, Monica Rojas-Martinez, Marjan Mansourian, Roberto Merletti, Miguel A Mananas Villanueva
Publication date
2012/1
Journal
Medical & biological engineering & computing
Volume
50
Pages
79-89
Publisher
Springer-Verlag
Description
Recently developed techniques allow the analysis of surface EMG in multiple locations over the skin surface (high-density surface electromyography, HDsEMG). The detected signal includes information from a greater proportion of the muscle of interest than conventional clinical EMG. However, recording with many electrodes simultaneously often implies bad-contacts, which introduce large power-line interference in the corresponding channels, and short-circuits that cause near-zero single differential signals when using gel. Such signals are called ‘outliers’ in data mining. In this work, outlier detection (focusing on bad contacts) is discussed for monopolar HDsEMG signals and a new method is proposed to identify ‘bad’ channels. The overall performance of this method was tested using the agreement rate against three experts’ opinions. Three other outlier detection methods were used for comparison. The …
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Scholar articles
HR Marateb, M Rojas-Martinez, M Mansourian… - Medical & biological engineering & computing, 2012