Demonstration of a Semi-Autonomous Hybrid Brain–Machine Interface Using Human Intracranial EEG, Eye Tracking, and Computer Vision to Control a Robotic Upper Limb Prosthetic
David P. McMullen(Johns Hopkins University), Nathan E. Crone(Johns Hopkins University), Matthew S. Fifer(Johns Hopkins University), Matthew S. Johannes(Johns Hopkins University Applied Physics Laboratory), William S. Anderson(Johns Hopkins University), Kapil D. Katyal(Johns Hopkins University Applied Physics Laboratory), Guy Hotson(Johns Hopkins University), Brock A. Wester(Johns Hopkins University Applied Physics Laboratory), Andrew Harris(Johns Hopkins University), Alan Ravitz(Johns Hopkins University), R. Jacob Vogelstein(Johns Hopkins University), Nitish V. Thakor(Johns Hopkins University), T. G. McGee(Johns Hopkins University)
IEEE Transactions on Neural Systems and Rehabilitation Engineering
January 31, 2014
Cited by 190
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