Dynamic training protocol improves the robustness of PR-based myoelectric control

Volume: 31, Pages: 249 - 256
Published: Jan 1, 2017
Abstract
In pattern recognition (PR)-based myoelectric control schemes, the classifier is generally trained in ideal laboratory conditions, due to which the classification accuracy might be affected by confounding factors such as force variations, limb positions, and inadvertent electromyography (EMG) activation. Many endeavors have been put forward to mitigate this effect by adopting new training protocols that consider only quite a few independent...
Paper Details
Title
Dynamic training protocol improves the robustness of PR-based myoelectric control
Published Date
Jan 1, 2017
Volume
31
Pages
249 - 256
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