Hand Movement Classification Using Burg Reflection Coefficients
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Oleksiy B. Pogrebnyak | Mariel Alfaro | Amadeo José Argüelles-Cruz | Mario Aldape-Pérez | Daniel Ramírez-Martínez | O. Pogrebnyak | M. Aldape-Pérez | Mariel Alfaro | A. Argüelles-Cruz | D. Ramírez-Martínez
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