Analysis Of EEG Signal For Using In Biometrical Classification

نویسندگان

  • Roman Zak
  • Jaromir Svejda
  • Roman Senkerik
  • Roman Jasek
چکیده

Aim of this article is to clarify the potential use of EEG signal in modern information age. The basic principle of Brain Computer Interface (BCI) lies in the connection of brain waves with output device through some interface. BCI technology represents a communication interface between brain and computer. To sense electric signal from the brain, it is usually used an equipment based on the last results of scientific research on neurotechnology. Communication is provided by wireless transmission through which the signal is transmitted from the equipment to personal computer. Then the signal is analysed, processed and used for finding appropriate classification parameters.

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تاریخ انتشار 2014