Training-Free Bayesian Self-Adaptive Classification for sEMG Pattern Recognition Including Motion Transition

Volume: 67, Issue: 6, Pages: 1775 - 1786
Published: Jun 1, 2020
Abstract
A direct, ready-to-use surface electromyogram (sEMG) pattern classification algorithm that does not require prerequisite training, regardless of the user, is proposed herein. In addition to data collection, conventional supervised learning approaches for sEMG require labeling and segmenting the data and additional time for the learning algorithm. Consequently, these approaches cannot cope well with sEMG patterns during motion transitions of...
Paper Details
Title
Training-Free Bayesian Self-Adaptive Classification for sEMG Pattern Recognition Including Motion Transition
Published Date
Jun 1, 2020
Volume
67
Issue
6
Pages
1775 - 1786
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