Authors
Ethan Eddy, Evan Campbell, Scott Bateman, Erik Scheme
Publication date
2024/5/17
Journal
Journal of Neural Engineering
Volume
21
Issue
3
Pages
036015
Publisher
IOP Publishing
Description
Discrete myoelectric control-based gesture recognition has recently gained interest as a possible input modality for many emerging ubiquitous computing applications. Unlike the continuous control commonly employed in powered prostheses, discrete systems seek to recognize the dynamic sequences associated with gestures to generate event-based inputs. More akin to those used in general-purpose human-computer interaction, these could include, for example, a flick of the wrist to dismiss a phone call or a double tap of the index finger and thumb to silence an alarm. Moelectric control systems have been shown to achieve near-perfect classification accuracy, but in highly constrained offline settings. Real-world, online systems are subject to'confounding factors'(ie factors that hinder the real-world robustness of myoelectric control that are not accounted for during typical offline analyses), which inevitably degrade …
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