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EMG Pattern Recognition System Based on Neural Networks

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4 Author(s)
Juan Carlos Gonzalez-Ibarra ; Centro de Investig. y Estudios de Posgrado (CIEP), Univ. Autonoma de San Luis Potosi (UASLP), San Luis Potosí, Mexico ; Carlos Soubervielle-Montalvo ; Omar Vital-Ochoa ; Hector Gerardo Perez-Gonzalez

In this document we present a methodology for movement pattern recognition from arm-forearm myoelectric signals, starting off from the design and implementation of an electromyography (EMG) instrumentation system, considering the Surface EMG for the Non Invasive Assessment of Muscles (SENIAM) rules. Signal processing and characterization techniques were applied using the pass-band Butter worth digital filter and fast Fourier transform (FFT). Artificial neural networks (ANN) such as back propagation and radial basis function (RBF) were used for the pattern recognition or classification of the EMG signals. The best results were obtained using the RBF ANN, achieving an average accuracy of 98%.

Published in:

Artificial Intelligence (MICAI), 2012 11th Mexican International Conference on

Date of Conference:

Oct. 27 2012-Nov. 4 2012