Improvement of EEG classification with a subject-specific feature selection

نویسندگان

  • Martin Pregenzer
  • Gert Pfurtscheller
  • C. Andrew
چکیده

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ارائه یک روش برچسب ‌گذاری سیگنال‎های مغزی به‎منظور طبقه‎بندی حالت‎های مختلف بیهوشی

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تاریخ انتشار 1995