Proceedings of the 14th International Joint Conference on Biomedical Engineering Systems and Technologies 2021
DOI: 10.5220/0010327500002865
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Prototype Reduction on sEMG Data for Instance-based Gesture Learning towards Real-time Prosthetic Control

Abstract: This work presents the design, implementation and validation of learning techniques based on the kNN scheme for gesture detection in prosthetic control. To cope with high computational demands in instance-based prediction, methods of dataset reduction are evaluated considering real-time determinism to allow for the reliable integration into battery-powered portable devices.The influence of parameterization and varying proportionality schemes is analyzed, utilizing an eight-channel-sEMG armband. Besides offline… Show more

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Cited by 2 publications
(1 citation statement)
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References 87 publications
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“…For instance, Atzori et al [10] Several notable works have demonstrated its effectiveness in various domains [27][28][29][30]. Prototype learning methodologies have recently found application in the field of EMG-gesture classification, primarily serving two overarching objectives: mitigating computational expenses [31,32] and detecting unknown gestures [33,34]. A seminal study by Sziburis et al [31,32]…”
Section: Machine Learning To Emg-based Gesture Classificationmentioning
confidence: 99%
“…For instance, Atzori et al [10] Several notable works have demonstrated its effectiveness in various domains [27][28][29][30]. Prototype learning methodologies have recently found application in the field of EMG-gesture classification, primarily serving two overarching objectives: mitigating computational expenses [31,32] and detecting unknown gestures [33,34]. A seminal study by Sziburis et al [31,32]…”
Section: Machine Learning To Emg-based Gesture Classificationmentioning
confidence: 99%