Emotional states recognition, implementing a low computational complexity strategy.

Journal: Health informatics journal
Published Date:

Abstract

This article describes a methodology to recognize emotional states through an electroencephalography signals analysis, developed with the premise of reducing the computational burden that is associated with it, implementing a strategy that reduces the amount of data that must be processed by establishing a relationship between electrodes and Brodmann regions, so as to discard electrodes that do not provide relevant information to the identification process. Also some design suggestions to carry out a pattern recognition process by low computational complexity neural networks and support vector machines are presented, which obtain up to a 90.2% mean recognition rate.

Authors

  • Adrian Rodriguez Aguiñaga
    Instituto Tecnológico de Tijuana, Mexico.
  • Miguel Angel Lopez Ramirez
    Instituto Tecnológico de Tijuana, Mexico.