Workshops of the Seventh International Brain-Computer Interface Meeting: Not Getting Lost in Translation.
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Ricardo Chavarriaga | Anton Nijholt | Matthias Hohmann | Brendan Z. Allison | Walter G. Besio | Fabien Lotte | An H. Do | Thorsten O. Zander | Gerwin Schalk | Jane E. Huggins | Steven Bedrick | Kyuhwa Lee | Gernot Müller-Putz | Charles W. Anderson | Christian Herff | Jennifer L. Collinger | Felix Putze | Michael Tangermann | Rüdiger Rupp | Betts Peters | Elmar Pels | Erik J. Aarnoutse | Christoph Guger | Michelle Kinsella | Stephanie M. Scott | Paul Tubig | C. Anderson | J. Collinger | W. Besio | G. Schalk | Kyuhwa Lee | A. Nijholt | R. Rupp | C. Herff | B. Allison | Ricardo Chavarriaga | T. Zander | Elmar G. M. Pels | E. Aarnoutse | C. Guger | G. Müller-Putz | Betts Peters | M. Tangermann | J. Huggins | F. Lotte | F. Putze | M. Hohmann | Steven Bedrick | Elmar G M Pels | P. Tubig | Michelle Kinsella | Matthias Hohmann | Christian Herff
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