Subject-Specific Feature Identification of Arousal and Valence Based on EEG
Emotions play a critical role in shaping our daily experiences by influencing decision-making, perception, learning, thinking, and behavior. Electroencephalographic (EEG) recordings are commonly utilized to measure brain activity, offering valuable insights into emotional states and allowing researc...
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Published in | Medical Measurement and Applications (MEMEA), IEEE International Workshop on pp. 1 - 6 |
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Main Authors | , , , , , , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
26.06.2024
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Subjects | |
Online Access | Get full text |
ISSN | 2837-5882 |
DOI | 10.1109/MeMeA60663.2024.10596784 |
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Abstract | Emotions play a critical role in shaping our daily experiences by influencing decision-making, perception, learning, thinking, and behavior. Electroencephalographic (EEG) recordings are commonly utilized to measure brain activity, offering valuable insights into emotional states and allowing researchers to gain deeper understanding of the mechanisms underlying affective processes. The goals of this study are to establish a protocol using validated stimuli from literature to evaluate the effectiveness of EEG signals on an individual level for classifying arousal and valence of elicited stimuli and to identify the most effective feature space, brain regions, and signal frequencies for this purpose. To this extent, specific experimental procedures were employed to elicit four emotions, and standardized preprocessing, feature extraction, selection, and classification processes across subjects were applied to evaluate affective decoding. Classification of arousal and valence levels as binary tasks achieved highest accuracy when utilizing frequency domain features, with 80.1% for arousal and 74.8% for valence. Frequency domain features proved particularly effective in distinguishing varying levels of arousal and valence. The frontal and central cortices emerged as crucial in cognitive processing related to emotion, with higher EEG frequency bands closely associated with emotion processing. Nonetheless, the delta band also showed significance in classification and warrants further exploration, particularly regarding arousal. The study refines EEG-based arousal and valence classification, highlighting optimal feature space, brain regions, and frequency bands, thereby advancing understanding of affective processes. |
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AbstractList | Emotions play a critical role in shaping our daily experiences by influencing decision-making, perception, learning, thinking, and behavior. Electroencephalographic (EEG) recordings are commonly utilized to measure brain activity, offering valuable insights into emotional states and allowing researchers to gain deeper understanding of the mechanisms underlying affective processes. The goals of this study are to establish a protocol using validated stimuli from literature to evaluate the effectiveness of EEG signals on an individual level for classifying arousal and valence of elicited stimuli and to identify the most effective feature space, brain regions, and signal frequencies for this purpose. To this extent, specific experimental procedures were employed to elicit four emotions, and standardized preprocessing, feature extraction, selection, and classification processes across subjects were applied to evaluate affective decoding. Classification of arousal and valence levels as binary tasks achieved highest accuracy when utilizing frequency domain features, with 80.1% for arousal and 74.8% for valence. Frequency domain features proved particularly effective in distinguishing varying levels of arousal and valence. The frontal and central cortices emerged as crucial in cognitive processing related to emotion, with higher EEG frequency bands closely associated with emotion processing. Nonetheless, the delta band also showed significance in classification and warrants further exploration, particularly regarding arousal. The study refines EEG-based arousal and valence classification, highlighting optimal feature space, brain regions, and frequency bands, thereby advancing understanding of affective processes. |
Author | Mainardi, Luca Barbieri, Riccardo Farabbi, Andrea Signorini, Maria Gabriella Milekic, Maja Steyde, Giulio Polo, Edoardo Maria Figueiredo, Patricia |
Author_xml | – sequence: 1 givenname: Edoardo Maria surname: Polo fullname: Polo, Edoardo Maria email: edoardomaria.polo@polimi.it organization: Politecnico di Milano,Department of Electronic, Information and Bioengineering,Milan,Italy – sequence: 2 givenname: Andrea surname: Farabbi fullname: Farabbi, Andrea email: andrea.farabbi@polimi.it organization: Politecnico di Milano,Department of Electronic, Information and Bioengineering,Milan,Italy – sequence: 3 givenname: Maja surname: Milekic fullname: Milekic, Maja email: maja.milekic@tecnico.ulisboa.com organization: Instituto Superior Técnico, Universidade de Lisboa, Institute for Systems and Robotics - Lisboa,Department of Bioengineering,Lisbon,Portugal – sequence: 4 givenname: Giulio surname: Steyde fullname: Steyde, Giulio email: giulio.steyde@polimi.it organization: Politecnico di Milano,Department of Electronic, Information and Bioengineering,Milan,Italy – sequence: 5 givenname: Maria Gabriella surname: Signorini fullname: Signorini, Maria Gabriella email: mariagabriella.signorini@polimi.it organization: Politecnico di Milano,Department of Electronic, Information and Bioengineering,Milan,Italy – sequence: 6 givenname: Patricia surname: Figueiredo fullname: Figueiredo, Patricia email: patricia.figueiredo@tecnico.ulisboa.pt organization: Instituto Superior Técnico, Universidade de Lisboa, Institute for Systems and Robotics - Lisboa,Department of Bioengineering,Lisbon,Portugal – sequence: 7 givenname: Luca surname: Mainardi fullname: Mainardi, Luca email: luca.mainardi@polimi.it organization: Politecnico di Milano,Department of Electronic, Information and Bioengineering,Milan,Italy – sequence: 8 givenname: Riccardo surname: Barbieri fullname: Barbieri, Riccardo email: riccardo.barbieri@polimi.it organization: Politecnico di Milano,Department of Electronic, Information and Bioengineering,Milan,Italy |
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SubjectTerms | Accuracy Electroencephalography Emotion recognition Feature extraction Frequency-domain analysis Gain measurement IADS machine learning OASIS Protocols |
Title | Subject-Specific Feature Identification of Arousal and Valence Based on EEG |
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