4.6 Article

An Approach to Emotion Recognition Using Brain Rhythm Sequencing and Asymmetric Features

期刊

COGNITIVE COMPUTATION
卷 14, 期 6, 页码 2260-2273

出版社

SPRINGER
DOI: 10.1007/s12559-022-10053-z

关键词

Brain rhythm sequencing; Electroencephalography; Emotion recognition; Asymmetric features; Symmetrical channels

资金

  1. National Natural Science Foundation of China [62072122]
  2. Scientific and Technological Planning Projects of Guangdong Province [2021A0505030074]
  3. Project for Distinctive Innovation of Ordinary Universities of Guangdong Province [2018KTSCX120]
  4. Guangdong Colleges and Universities Young Innovative Talents Projects [2018KQNCX138]
  5. Special Projects in Key Fields of Ordinary Universities of Guangdong Province [2021ZDZX1087]
  6. Guangzhou Science and Technology Plan Project [202102020857]
  7. Research Fund of Guangdong Polytechnic Normal University [2022SDKYA015]
  8. Research Fund of Guangxi Key Lab of Multi-source Information Mining Security [MIMS22-02]

向作者/读者索取更多资源

Researchers propose a method based on brain rhythm sequencing and asymmetric features to recognize emotions during self-isolation. The results show that this method achieves high accuracy in emotion recognition, especially in resource-limited situations. Further investigation reveals the individual characteristics of emotion recognition, suggesting the inclusion of subject-dependent properties.
Emotion can be influenced during self-isolation, and to avoid severe mood swings, emotional regulation is meaningful. To achieve this, efficiently recognizing emotion is a vital step, which can be realized by electroencephalography signals. Previously, inspired by the knowledge of sequencing in bioinformatics, a method termed brain rhythm sequencing that analyzes electroencephalography as the sequence consisting of the dominant rhythm has been proposed for seizure detection. In this work, with the help of similarity measure methods, the asymmetric features are extracted from the sequences generated by different channel data. After evaluating all asymmetric features for emotion recognition, the optimal feature that yields remarkable accuracy is identified. Therefore, the classification task can be accomplished through a small amount of channel data. From a music emotion recognition experiment and a public DEAP dataset, the classification accuracies of various test sets are approximately 80-85% when employing an optimal feature extracted from one pair of symmetrical channels. Such performances are impressive when using fewer resources is a concern. Further investigation revealed that emotion recognition shows strongly individual characteristics, so an appropriate solution is to include the subject-dependent properties. Compared to the existing works, this method benefits from the design of a portable emotion-aware device used during self-isolation, as fewer scalp sensors are needed. Hence, it would provide a novel way to realize emotional applications in the future.

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