Noisy EEG signals classification based on entropy metrics. Performance assessment using first and second generation statistics
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David Cuesta-Frau | Antonio Molina-Picó | Sandra Oltra-Crespo | Pau Miró-Martínez | Jorge Jordán Núñez | D. Cuesta-Frau | P. Miró-Martínez | S. Oltra-Crespo | Jorge Jordán Núñez | A. Molina-Picó
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