Title of article :
Methodology Proposal of EMG Hand Movement Classification Based on Cross Recurrence Plots
Author/Authors :
Aceves-Fernandez, M. A Faculty of Engineering - Cerro de las Campanas - Queretaro, Mexico , Ramos-Arreguin, J. M Faculty of Engineering - Cerro de las Campanas - Queretaro, Mexico , Gorrostieta-Hurtado, E Faculty of Engineering - Cerro de las Campanas - Queretaro, Mexico , Pedraza-Ortega, J. C Faculty of Engineering - Cerro de las Campanas - Queretaro, Mexico
Abstract :
Dealing with electromyography (EMG) signals is often not simple. *e nature of these signals is nonstationary, noisy, and high
dimensional. *ese EMG characteristics make their predictability even more challenging. Cross recurrence plots (CRPs) have
demonstrated in many works their capability of detecting very subtle patterns in signals often buried in a noisy environment. In
this contribution, fifty subjects performed ten different hand movements with each hand with the aid of electrodes placed in each
arm. Furthermore, the nonlinear features of each subject’s signals using cross recurrence quantification analysis (CRQA) have
been performed. Also, a novel methodology is proposed using CRQA as the mainstream technique to detect and classify each of
the movements presented in this study. Additional tools were presented to determine to which extent this proposed methodology
is able to avoid false classifications, thus demonstrating that this methodology is feasible to classify surface EMG (SEMG) signals
with good accuracy, sensitivity, and specificity. Lastly, the results were compared with traditional machine learning methods, and
the advantages of using the proposed methodology above such methods are highlighted.
Keywords :
EMG , Classification , Methodology , CRQA
Journal title :
Computational and Mathematical Methods in Medicine