Estudio de la Longitud de Ventana de Tiempo en el Reconocimiento de Emociones Basado en Señales EEG

Autores/as

DOI:

https://doi.org/10.17488/RMIB.45.1.3

Palabras clave:

aprendizaje automático, electroencefalograma, longitud de ventana de tiempo, reconocimiento de emociones

Resumen

El objetivo de esta investigación es presentar un análisis comparativo empleando diversas longitudes de ventanas de tiempo (VT) durante el reconocimiento de emociones, utilizando técnicas de aprendizaje automático y el dispositivo de sensado inalámbrico portátil EPOC+. En este estudio, se utilizará la entropía como característica para evaluar el rendimiento de diferentes modelos clasificadores en diferentes longitudes de VT, basándose en un conjunto de datos de señales EEG extraídas de individuos durante la estimulación de emociones. Se llevaron a cabo dos tipos de análisis: entre sujetos e intra-sujetos. Se compararon las medidas de rendimiento, tales como la exactitud, el área bajo la curva y el coeficiente de Cohen's Kappa, de cinco modelos clasificadores supervisados: K-Nearest Neighbors (KNN), Support Vector Machine (SVM), Logistic Regression (LR), Random Forest (RF) y Decision Trees (DT). Los resultados indican que, en ambos análisis, los cinco modelos presentan un mayor rendimiento en VT de 2 a 15 segundos, destacándose especialmente la VT de 10 segundos para el análisis entre los sujetos y 5 segundos intra-sujetos; además, no se recomienda utilizar VT superiores a 20 segundos. Estos hallazgos ofrecen una orientación valiosa para la elección de las VT en el análisis de señales EEG al estudiar las emociones.

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Biografía del autor/a

Alejandro Jarillo Silva, Universidad de la Sierra Sur, México

 

 

Víctor Alberto Gómez Pérez, Universidad de la Sierra Sur, México

 

 

Omar Arturo Domínguez Ramírez, Universidad Autónoma del Estado de Hidalgo, México

 

 

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Publicado

2024-03-20

Cómo citar

Jarillo Silva, A., Gómez Pérez, V. A., & Domínguez Ramírez, O. A. (2024). Estudio de la Longitud de Ventana de Tiempo en el Reconocimiento de Emociones Basado en Señales EEG . Revista Mexicana De Ingenieria Biomedica, 45(1), 31–42. https://doi.org/10.17488/RMIB.45.1.3

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