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Issue No.10 - October (2008 vol.41)
pp: 52-56
Dennis J. McFarland , New York State Department of Health
Jonathan R. Wolpaw , New York State Department of Health
Brain-computer interfaces (BCIs) use signals recorded from the brain to operate robotic or prosthetic devices. Both invasive and noninvasive approaches have proven effective. Achieving the speed, accuracy, and reliability necessary for real-world applications remains the major challenge for BCI-based robotic control.
brain-computer interfaces, robotic devices, prosthetic devices
Dennis J. McFarland, Jonathan R. Wolpaw, "Brain-Computer Interface Operation of Robotic and Prosthetic Devices", Computer, vol.41, no. 10, pp. 52-56, October 2008, doi:10.1109/MC.2008.409
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