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Real-Time EMG Signal Classification via Recurrent Neural Networks

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arxiv 2109.05674 v1 pith:PTGCQXI3 submitted 2021-09-13 eess.SP cs.CVcs.LGcs.RO

Real-Time EMG Signal Classification via Recurrent Neural Networks

classification eess.SP cs.CVcs.LGcs.RO
keywords classificationneuralaccuracyarchitecturesrecurrentachievingchallengingdelay
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Real-time classification of Electromyography signals is the most challenging part of controlling a prosthetic hand. Achieving a high classification accuracy of EMG signals in a short delay time is still challenging. Recurrent neural networks (RNNs) are artificial neural network architectures that are appropriate for sequential data such as EMG. In this paper, after extracting features from a hybrid time-frequency domain (discrete Wavelet transform), we utilize a set of recurrent neural network-based architectures to increase the classification accuracy and reduce the prediction delay time. The performances of these architectures are compared and in general outperform other state-of-the-art methods by achieving 96% classification accuracy in 600 msec.

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