Emotion Detection from EEG Signals Using Machine Deep Learning Models
Resource type
Authors/contributors
- Fernandes, João Vitor Marques Rabelo (Author)
- Alexandria, Auzuir Ripardo de (Author)
- Lobo Marques, Joao Alexandre (Author)
- Assis, Débora Ferreira de (Author)
- Motta, Pedro Crosara (Author)
- Silva, Bruno Riccelli dos Santos (Author)
Title
Emotion Detection from EEG Signals Using Machine Deep Learning Models
Abstract
<jats:p>Detecting emotions is a growing field aiming to comprehend and interpret human emotions from various data sources, including text, voice, and physiological signals. Electroencephalogram (EEG) is a unique and promising approach among these sources. EEG is a non-invasive monitoring technique that records the brain’s electrical activity through electrodes placed on the scalp’s surface. It is used in clinical and research contexts to explore how the human brain responds to emotions and cognitive stimuli. Recently, its use has gained interest in real-time emotion detection, offering a direct approach independent of facial expressions or voice. This is particularly useful in resource-limited scenarios, such as brain–computer interfaces supporting mental health. The objective of this work is to evaluate the classification of emotions (positive, negative, and neutral) in EEG signals using machine learning and deep learning, focusing on Graph Convolutional Neural Networks (GCNN), based on the analysis of critical attributes of the EEG signal (Differential Entropy (DE), Power Spectral Density (PSD), Differential Asymmetry (DASM), Rational Asymmetry (RASM), Asymmetry (ASM), Differential Causality (DCAU)). The electroencephalography dataset used in the research was the public SEED dataset (SJTU Emotion EEG Dataset), obtained through auditory and visual stimuli in segments from Chinese emotional movies. The experiment employed to evaluate the model results was “subject-dependent”. In this method, the Deep Neural Network (DNN) achieved an accuracy of 86.08%, surpassing SVM, albeit with significant processing time due to the optimization characteristics inherent to the algorithm. The GCNN algorithm achieved an average accuracy of 89.97% in the subject-dependent experiment. This work contributes to emotion detection in EEG, emphasizing the effectiveness of different models and underscoring the importance of selecting appropriate features and the ethical use of these technologies in practical applications. The GCNN emerges as the most promising methodology for future research.</jats:p>
Publication
Bioengineering
Volume
11
Issue
8
Pages
782
Date
2024-08-02
Language
en
ISSN
2306-5354
Accessed
4/9/25, 5:48 AM
Library Catalog
dspace.usj.edu.mo
Extra
Publisher: MDPI AG
Citation
Fernandes, J. V. M. R., Alexandria, A. R. de, Lobo Marques, J. A., Assis, D. F. de, Motta, P. C., & Silva, B. R. dos S. (2024). Emotion Detection from EEG Signals Using Machine Deep Learning Models. Bioengineering, 11(8), 782. https://doi.org/10.3390/bioengineering11080782
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