Evolutionary Brain Computer Interfaces

نویسندگان

  • Riccardo Poli
  • Caterina Cinel
  • Luca Citi
  • Francisco Sepulveda
چکیده

We propose a BCI mouse and speller based on the manipulation of P300 waves in EEG signals. The 2–D motion of the pointer on the screen is controlled by directly combining the amplitudes of the output produced by a filter in the presence of different stimuli. This filter and the features to be combined within it are optimised by a GA.

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تاریخ انتشار 2007