A subject-independent method for automatically grading electromyographic features during a fatiguing contraction |
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Authors: | Chattopadhyay Rita Jesunathadas Mark Poston Brach Santello Marco Ye Jieping Panchanathan Sethuraman |
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Affiliation: | Department of Computer Science and Engineering and with the Center for Cognitive Ubiquitous Computing, Arizona State University, Tempe, AZ 85287, USA. rchattop@asu.edu |
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Abstract: | Many studies have attempted to monitor fatigue from electromyogram (EMG) signals. However, fatigue affects EMG in a subject-specific manner. We present here a subject-independent framework for monitoring the changes in EMG features that accompany muscle fatigue based on principal component analysis and factor analysis. The proposed framework is based on several time- and frequency-domain features, unlike most of the existing work, which is based on two to three features. Results show that latent factors obtained from factor analysis on these features provide a robust and unified framework. This framework learns a model from EMG signals of multiple subjects, that form a reference group, and monitors the changes in EMG features during a sustained submaximal contraction on a test subject on a scale from zero to one. The framework was tested on EMG signals collected from 12 muscles of eight healthy subjects. The distribution of factor scores of the test subject, when mapped onto the framework was similar for both the subject-specific and subject-independent cases. |
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