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EEG Dataset for Emotion Analysis

Author

Listed:
  • Catalina Aguirre-Grisales

    (Department of Electronic Engineering, Faculty of Engineering, Universidad del Quindío, Armenia 16293, Colombia)

  • Maria José Arbeláez-Arias

    (Department of Electronic Engineering, Faculty of Engineering, Universidad del Quindío, Armenia 16293, Colombia)

  • Andrés Felipe Valencia-Rincón

    (Department of Electronic Engineering, Faculty of Engineering, Universidad del Quindío, Armenia 16293, Colombia)

  • Hector Fabio Torres-Cardona

    (Department of Music, Faculty of Arts and Humanities, Universidad de Caldas, Manizales 170004, Colombia)

  • Jose Luis Rodriguéz-Sotelo

    (Department of Electronic and Automation, Faculty of Engineering, Universidad Autónoma de Manizales, Manizalez 170001, Colombia)

Abstract

This work presents an EEG signal database derived from the induction of three emotional states using auditory stimuli. To this end, an experiment was designed in which 30 selected affective sounds from the IADS database were presented to 36 volunteers, from whom EEG signals were acquired. Stimuli were randomly configured in the Psychopy platform and synchronized via the LSL library with the OpenVibe signal acquisition platform. The 16-channel NautilusG brain computer interface was used for signal acquisition. As part of the database validation, a recognition system for the three emotional states was developed. This system utilized machine-learning-based parameterization and classification techniques, achieving detection percentages of 88.57%.

Suggested Citation

  • Catalina Aguirre-Grisales & Maria José Arbeláez-Arias & Andrés Felipe Valencia-Rincón & Hector Fabio Torres-Cardona & Jose Luis Rodriguéz-Sotelo, 2025. "EEG Dataset for Emotion Analysis," Data, MDPI, vol. 10(9), pages 1-18, September.
  • Handle: RePEc:gam:jdataj:v:10:y:2025:i:9:p:144-:d:1746820
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