Positive and negative emotion classification based on multi-channel

The EEG features of different emotions were extracted based on multi-channel and forehead channels in this study. The EEG signals of 26 subjects were collected by the emotional video evoked method. The results show that the energy ratio and differential entropy of the frequency band can be used to c...

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Main Authors: Long, Fangfang, Zhao, Shanguang, Wei, Xin, Ng, Siew Cheok, Ni, Xiaoli, Chi, Aiping, Fang, Peng, Zeng, Weigang, Wei, Bokun
Format: Article
Published: Frontiers Media SA 2021
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Online Access:http://eprints.um.edu.my/34221/
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spelling my.um.eprints.342212022-09-08T04:08:26Z http://eprints.um.edu.my/34221/ Positive and negative emotion classification based on multi-channel Long, Fangfang Zhao, Shanguang Wei, Xin Ng, Siew Cheok Ni, Xiaoli Chi, Aiping Fang, Peng Zeng, Weigang Wei, Bokun R Medicine The EEG features of different emotions were extracted based on multi-channel and forehead channels in this study. The EEG signals of 26 subjects were collected by the emotional video evoked method. The results show that the energy ratio and differential entropy of the frequency band can be used to classify positive and negative emotions effectively, and the best effect can be achieved by using an SVM classifier. When only the forehead and forehead signals are used, the highest classification accuracy can reach 66%. When the data of all channels are used, the highest accuracy of the model can reach 82%. After channel selection, the best model of this study can be obtained. The accuracy is more than 86%. Frontiers Media SA 2021-08-26 Article PeerReviewed Long, Fangfang and Zhao, Shanguang and Wei, Xin and Ng, Siew Cheok and Ni, Xiaoli and Chi, Aiping and Fang, Peng and Zeng, Weigang and Wei, Bokun (2021) Positive and negative emotion classification based on multi-channel. Frontiers In Behavioral Neuroscience, 15. ISSN 1662-5153, DOI https://doi.org/10.3389/fnbeh.2021.720451 <https://doi.org/10.3389/fnbeh.2021.720451>. 10.3389/fnbeh.2021.720451
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic R Medicine
spellingShingle R Medicine
Long, Fangfang
Zhao, Shanguang
Wei, Xin
Ng, Siew Cheok
Ni, Xiaoli
Chi, Aiping
Fang, Peng
Zeng, Weigang
Wei, Bokun
Positive and negative emotion classification based on multi-channel
description The EEG features of different emotions were extracted based on multi-channel and forehead channels in this study. The EEG signals of 26 subjects were collected by the emotional video evoked method. The results show that the energy ratio and differential entropy of the frequency band can be used to classify positive and negative emotions effectively, and the best effect can be achieved by using an SVM classifier. When only the forehead and forehead signals are used, the highest classification accuracy can reach 66%. When the data of all channels are used, the highest accuracy of the model can reach 82%. After channel selection, the best model of this study can be obtained. The accuracy is more than 86%.
format Article
author Long, Fangfang
Zhao, Shanguang
Wei, Xin
Ng, Siew Cheok
Ni, Xiaoli
Chi, Aiping
Fang, Peng
Zeng, Weigang
Wei, Bokun
author_facet Long, Fangfang
Zhao, Shanguang
Wei, Xin
Ng, Siew Cheok
Ni, Xiaoli
Chi, Aiping
Fang, Peng
Zeng, Weigang
Wei, Bokun
author_sort Long, Fangfang
title Positive and negative emotion classification based on multi-channel
title_short Positive and negative emotion classification based on multi-channel
title_full Positive and negative emotion classification based on multi-channel
title_fullStr Positive and negative emotion classification based on multi-channel
title_full_unstemmed Positive and negative emotion classification based on multi-channel
title_sort positive and negative emotion classification based on multi-channel
publisher Frontiers Media SA
publishDate 2021
url http://eprints.um.edu.my/34221/
_version_ 1744649164868812800
score 13.160551