METHODS OF MAPPING FEATURES APPLIED TO THE PROCESSING OF EEG SIGNS

Authors

  • André Hallwas Ribeiro Alves Universidade do Oeste Paulista - Unoeste
  • Silvio Antonio Carro Universidade do Oeste Paulista - Unoeste
  • Danillo Roberto Pereira Faculdade de Informática de Presidente Prudente (FIPP) – Unoeste

Keywords:

Machine Learning; Mapping Features; Artificial Intelligence

Abstract

The electroencephalogram (EEG) is a medical examination that aims to record the individual's brain activity for further analysis. Several applications are currently emerging for the same, and a major factor for any application is finding patterns and groups in the signals and relating them to the actions. Currently, there are several classifiers used for this, and these classifiers are applied directly to EEG signals. However, another theme uses Mapping Features methods in signal processing and then performs the classification on the resulting signals for better results.

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Author Biography

  • Danillo Roberto Pereira, Faculdade de Informática de Presidente Prudente (FIPP) – Unoeste

    Possui graduação em Ciência da Computação pela FCT-UNESP (2006) ; mestrado em Ciência da Computação pela UNICAMP (2009); e doutorado pela UNICAMP. Tem experiência na área de Ciência da Computação, com ênfase em Geometria Computacional, Computação Gráfica e Visão Computacional. lattes.cnpq.br/0122307432250869

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Published

2019-07-31

How to Cite

METHODS OF MAPPING FEATURES APPLIED TO THE PROCESSING OF EEG SIGNS. (2019). Colloquium Exactarum. ISSN: 2178-8332, 11(2), 66-77. https://journal.unoeste.br/index.php/ce/article/view/3169

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