Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods
Background: Emotion recognition, as a subset of affective computing, has received considerable attention in recent years. Emotions are key to human-computer interactions. Electroencephalogram (EEG) is considered a valuable physiological source of information for classifying emotions. However, it has...
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Shahid Beheshti University of Medical Sciences
2018-10-01
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Series: | International Clinical Neuroscience Journal |
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doaj-7bc5f6e52dac487e9a7c1a8d275b086f2020-11-24T22:09:53ZengShahid Beheshti University of Medical SciencesInternational Clinical Neuroscience Journal2383-18712383-20962018-10-015413514910.15171/icnj.2018.26icnj-1039Emotion Classification through Nonlinear EEG Analysis Using Machine Learning MethodsMorteza Zangeneh Soroush0Keivan Maghooli1Seyed Kamaledin Setarehdan2Ali Motie Nasrabadi3Department of Biomedical Engineering, Science and Research Branch, Islamic Azad University, Tehran, IranDepartment of Biomedical Engineering, Science and Research Branch, Islamic Azad University, Tehran, IranControl and Intelligent Processing Centre of Excellence, School of Electrical and Computer Engineering, College of Engineering, University of Tehran, Tehran, IranDepartment of Biomedical Engineering, Faculty of Engineering, Shahed University, Tehran, IranBackground: Emotion recognition, as a subset of affective computing, has received considerable attention in recent years. Emotions are key to human-computer interactions. Electroencephalogram (EEG) is considered a valuable physiological source of information for classifying emotions. However, it has complex and chaotic behavior. Methods: In this study, an attempt is made to extract important nonlinear features from EEGs with the aim of emotion recognition. We also take advantage of machine learning methods such as evolutionary feature selection methods and committee machines to enhance the classification performance. Classification performed concerning both arousal and valence factors. Results: Results suggest that the proposed method is successful and comparable to the previous works. A recognition rate equal to 90% achieved, and the most significant features reported. We apply the final classification scheme to 2 different databases including our recorded EEGs and a benchmark dataset to evaluate the suggested approach. Conclusion: Our findings approve of the effectiveness of using nonlinear features and a combination of classifiers. Results are also discussed from different points of view to understand brain dynamics better while emotion changes. This study reveals useful insights about emotion classification and brain-behavior related to emotion elicitation.http://journals.sbmu.ac.ir/Neuroscience/article/download/22921/4 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Morteza Zangeneh Soroush Keivan Maghooli Seyed Kamaledin Setarehdan Ali Motie Nasrabadi |
spellingShingle |
Morteza Zangeneh Soroush Keivan Maghooli Seyed Kamaledin Setarehdan Ali Motie Nasrabadi Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods International Clinical Neuroscience Journal |
author_facet |
Morteza Zangeneh Soroush Keivan Maghooli Seyed Kamaledin Setarehdan Ali Motie Nasrabadi |
author_sort |
Morteza Zangeneh Soroush |
title |
Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods |
title_short |
Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods |
title_full |
Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods |
title_fullStr |
Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods |
title_full_unstemmed |
Emotion Classification through Nonlinear EEG Analysis Using Machine Learning Methods |
title_sort |
emotion classification through nonlinear eeg analysis using machine learning methods |
publisher |
Shahid Beheshti University of Medical Sciences |
series |
International Clinical Neuroscience Journal |
issn |
2383-1871 2383-2096 |
publishDate |
2018-10-01 |
description |
Background: Emotion recognition, as a subset of affective computing, has received considerable attention in recent years. Emotions are key to human-computer interactions. Electroencephalogram (EEG) is considered a valuable physiological source of information for classifying emotions. However, it has complex and chaotic behavior. Methods: In this study, an attempt is made to extract important nonlinear features from EEGs with the aim of emotion recognition. We also take advantage of machine learning methods such as evolutionary feature selection methods and committee machines to enhance the classification performance. Classification performed concerning both arousal and valence factors. Results: Results suggest that the proposed method is successful and comparable to the previous works. A recognition rate equal to 90% achieved, and the most significant features reported. We apply the final classification scheme to 2 different databases including our recorded EEGs and a benchmark dataset to evaluate the suggested approach. Conclusion: Our findings approve of the effectiveness of using nonlinear features and a combination of classifiers. Results are also discussed from different points of view to understand brain dynamics better while emotion changes. This study reveals useful insights about emotion classification and brain-behavior related to emotion elicitation. |
url |
http://journals.sbmu.ac.ir/Neuroscience/article/download/22921/4 |
work_keys_str_mv |
AT mortezazangenehsoroush emotionclassificationthroughnonlineareeganalysisusingmachinelearningmethods AT keivanmaghooli emotionclassificationthroughnonlineareeganalysisusingmachinelearningmethods AT seyedkamaledinsetarehdan emotionclassificationthroughnonlineareeganalysisusingmachinelearningmethods AT alimotienasrabadi emotionclassificationthroughnonlineareeganalysisusingmachinelearningmethods |
_version_ |
1725810278095912960 |