Brain–computer interface (BCI) systems detect changes in brain signals that reflect human intention, then translate these signals to control monitors or external devices (for a comprehensive review, see [1]). BCIs typically measure electrical signals resulting from neural firing (i.e. neuronal action potentials, Electroencephalogram (ECoG), or Electroencephalogram (EEG)). Sophisticated pattern recognition and classification algorithms convert neural activity into the required control signals. BCI research has focused heavily on developing powerful signal processing and machine learning techniques to accurately classify neural activity [2–4].
CITATION STYLE
Neuper, C., & Pfurtscheller, G. (2009). Neurofeedback Training for BCI Control. In Frontiers Collection (Vol. Part F952, pp. 65–78). Springer VS. https://doi.org/10.1007/978-3-642-02091-9_4
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