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  4. Using Black Hole Algorithm To Improve Eeg-Based Emotion Recognition
 
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Using Black Hole Algorithm To Improve Eeg-Based Emotion Recognition

Journal
Computational Intelligence and Neuroscience
Date Issued
2018-06-11
Author(s)
Muñoz Soto, Roberto  
Facultad de Ingeniería  
Olivares, Rodrigo  
Facultad de Ingeniería  
Carla Taramasco
Rodolfo Villarroel
Ricardo Soto
Thiago S. Barcelos
Erick Merino
Alonso, María Francisca  
Facultad de Medicina  
DOI
10.1155/2018/3050214
WoS ID
WOS:000436346900001
Abstract
Emotions are a critical aspect of human behavior. One widely used technique for research in emotion measurement is based on the use of EEG signals. In general terms, the first step of signal processing is the elimination of noise, which can be done in manual or automatic terms. The next step is determining the feature vector using, for example, entropy calculation and its variations to generate a classification model. It is possible to use this approach to classify theoretical models such as the Circumplex model. This model proposes that emotions are distributed in a two-dimensional circular space. However, methods to determine the feature vector are highly susceptible to noise that may exist in the signal. In this article, a new method to adjust the classifier is proposed using metaheuristics based on the black hole algorithm. The method is aimed at obtaining results similar to those obtained with manual noise elimination methods. In order to evaluate the proposed method, the MAHNOB HCI Tagging Database was used. Results show that using the black hole algorithm to optimize the feature vector of the Support Vector Machine we obtained an accuracy of 92.56% over 30 executions.
Subjects

Computer Science

Mathematical And Comp...

Mathematics

Medicine

Neurosciences

Neuroscience

OCDE Subjects

Medical And Health Sc...

Quartile (Date Issued)
Q3
License
acceso abierto

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