学位论文详细信息
Longitudinal tracking of physiological state with electromyographic signals.
machine learning;wavelets;sensorimotor;disuse;emg
Robert Warren Stallard
University:University of Louisville
Department:Electrical and Computer Engineering
关键词: machine learning;    wavelets;    sensorimotor;    disuse;    emg;   
Others  :  https://ir.library.louisville.edu/cgi/viewcontent.cgi?article=4051&context=etd
美国|英语
来源: The Universite of Louisville's Institutional Repository
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【 摘 要 】

Electrophysiological measurements have been used in recent history to classify instantaneous physiological configurations, e.g., hand gestures. This work investigates the feasibility of working with changes in physiological configurations over time (i.e., longitudinally) using a variety of algorithms from the machine learning domain. We demonstrate a high degree of classification accuracy for a binary classification problem derived from electromyography measurements before and after a 35-day bedrest. The problem difficulty is increased with a more dynamic experiment testing for changes in astronaut sensorimotor performance by taking electromyography and force plate measurements before, during, and after a jump from a small platform. A LASSO regularization is performed to observe changes in relationship between electromyography features and force plate outcomes. SVM classifiers are employed to correctly identify the times at which these experiments are performed, which is important as these indicate a trajectory of adaptation.

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