Identifying Suitable Brain Regions and Trial Size Segmentation for Positive/Negative Emotion Recognition

Author:

Sorinas Jennifer1,Grima Maria Dolores2,Ferrandez Jose Manuel3,Fernandez Eduardo1

Affiliation:

1. Institute of Bioengineering, University Miguel Hernández and CIBER BBN, Avenida de la Universidad, Elche 03202, Spain

2. Telecomm School, Universidad Politecnica de Cartagena and Institute of Bioengineering, University Miguel Hernández, Avenida de la Universidad Elche 03202, Spain

3. Telecomm School, Universidad Politecnica de Cartagena, Campus Muralla del Mar s/n, Cartagena (Murcia) 30202, Spain

Abstract

The development of suitable EEG-based emotion recognition systems has become a main target in the last decades for Brain Computer Interface applications (BCI). However, there are scarce algorithms and procedures for real-time classification of emotions. The present study aims to investigate the feasibility of real-time emotion recognition implementation by the selection of parameters such as the appropriate time window segmentation and target bandwidths and cortical regions. We recorded the EEG-neural activity of 24 participants while they were looking and listening to an audiovisual database composed of positive and negative emotional video clips. We tested 12 different temporal window sizes, 6 ranges of frequency bands and 60 electrodes located along the entire scalp. Our results showed a correct classification of 86.96% for positive stimuli. The correct classification for negative stimuli was a little bit less (80.88%). The best time window size, from the tested 1[Formula: see text]s to 12[Formula: see text]s segments, was 12[Formula: see text]s. Although more studies are still needed, these preliminary results provide a reliable way to develop accurate EEG-based emotion classification.

Publisher

World Scientific Pub Co Pte Lt

Subject

Computer Networks and Communications,General Medicine

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