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EMG Wrist-hand Motion Recognition System for Real-time Embedded Platform

Sumit A. RauraleThe Institute of Electronics, Communications and Information Technology (ECIT), Queen’s University of Belfast, U.KJohn McAllisterThe Institute of Electronics, Communications and Information Technology (ECIT), Queen’s University of Belfast, U.KJesús Martínez del RincónThe Institute of Electronics, Communications and Information Technology (ECIT), Queen’s University of Belfast, U.K
2019en
ABI

Аннотация

Electromyography (EMG) signal analysis is a popular method for controlling prosthetic and gesture control equipment. For portable systems, such as prosthetic limbs, real-time low-power operation on embedded processors is critical, but to date there has been no record of how existing EMG analysis approaches support such deployments. This paper presents a novel approach to time-domain classification of multichannel EMG signals harnessed from randomly-placed sensors according to the wrist-hand movements which caused their occurrence. It shows how, by employing a very small set of time-domain features, Kernel Fisher discriminant feature projection and Radial Bias Function neural network classifiers, nine wrist-hand movements can be detected with accuracy exceeding 99% - surpassing the state-of-the-art on record. It also shows how, when deployed on ARM Cortex-A53, the processing time is not only sufficient to enable real-time processing but is also a factor 50 shorter than the leading time-frequency techniques on record.

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Цитирований: 2Использованных источников: 0