DocumentCode
982865
Title
Gesture-based control and EMG decomposition
Author
Wheeler, Kevin R. ; Chang, Mindy H. ; Knuth, Kevin H.
Author_Institution
NASA Ames Res. Center, Intelligent Syst. Div., Moffett Field, CA
Volume
36
Issue
4
fYear
2006
fDate
7/1/2006 12:00:00 AM
Firstpage
503
Lastpage
514
Abstract
This paper presents two probabilistic developments for the use with electromyograms (EMGs). First described is a neuroelectric interface for virtual device control based on gesture recognition. The second development is a Bayesian method for decomposing EMGs into individual motor unit action potentials (MUAPs). This Bayesian decomposition method allows for distinguishing individual muscle groups with the goal of enhancing gesture recognition. All examples presented rely upon sampling EMG data from a subject´s forearm. The gesture-based recognition uses pattern recognition software that has been trained to identify gestures from among a given set of gestures. The pattern recognition software consists of hidden Markov models, which are used to recognize the gestures as they are being performed in real time from moving averages of EMGs. Two experiments were conducted to examine the feasibility of this interface technology. The first replicated a virtual joystick interface, and the second replicated a keyboard. Moving averages of EMGs do not provide an easy distinction between fine muscle groups. To better distinguish between different fine motor skill muscle groups, we present a Bayesian algorithm to separate surface EMGs into representative MUAPs. The algorithm is based on differential variable component analysis, which was originally developed for electroencephalograms. The algorithm uses a simple forward model representing a mixture of MUAPs as seen across multiple channels. The parameters of this model are iteratively optimized for each component. Results are presented on both synthetic and experimental EMG data. The synthetic case has additive white noise and is compared with known components. The experimental EMG data were obtained using a custom linear electrode array designed for this study
Keywords
AWGN; Bayes methods; electromyography; gesture recognition; hidden Markov models; medical signal processing; Bayesian decomposition method; EMG decomposition; additive white noise; custom linear electrode array; electroencephalogram; electromyogram; gesture recognition; gesture-based control; hidden Markov model; motor unit action potential; neuroelectric interface; pattern recognition software; virtual device control; Bayesian methods; Brain modeling; Electromyography; Hidden Markov models; Iterative algorithms; Keyboards; Muscles; Pattern recognition; Sampling methods; Software performance; Bayesian decomposition; electromyogram (EMG); gesture recognition; hidden Markov model (HMM); motor unit action potential (MUAP);
fLanguage
English
Journal_Title
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
Publisher
ieee
ISSN
1094-6977
Type
jour
DOI
10.1109/TSMCC.2006.875418
Filename
1643841
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