Visuo-Spatial Attention Frame Recognition for Brain-Computer Interfaces

نویسندگان

  • Ferran Galán
  • Julie Palix
  • Ricardo Chavarriaga
  • Pierre W. Ferrez
  • Eileen Lew
  • Claude-Alain Hauert
  • José del R. Millán
چکیده

Objective: To assess the feasibility of recognizing visual spatial attention frames for Brain-computer interfaces (BCI) applications. Methods: EEG data was recorded with 64 electrodes from 2 subjects executing a visuo-spatial attention task indicating 2 target locations. Continuous Morlet wavelet coefficients were estimated on 18 frequency components and 16 preselected electrodes in trials of 600 ms. The spatial patterns of the 16 frequency components frames were simultaneously detected and classified (between the two targets). The classification accuracy was assessed using 20-fold cross-validation. Results: The maximum frames average classification accuracies are 80.64% and 87.31% for subject 1 and 2 respectively, both utilizing frequency components located in gamma band.

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تاریخ انتشار 2007