Low-Cost Robotic Guide Based on a Motor Imagery Brain–Computer Interface for Arm Assisted Rehabilitation
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Eduardo Quiles | Ferran Suay | Gemma Candela | Nayibe Chio | Manuel Jiménez | Leandro Álvarez-Kurogi | Manuel Jiménez | E. Quiles | N. Chio | Ferran Suay | G. Candela | Leandro Álvarez-Kurogi | M. Jimenez
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