Geyi Liu
EEG-based Deep Emotional Diagnosis: A Comparative Study
Liu, Geyi; Zhang, Zhaonian; Jiang, Richard; Crookes, Danny; Chazot, Paul
Authors
Contributors
Richard Jiang
Editor
Li Zhang
Editor
Hua-Liang Wei
Editor
Danny Crookes
Editor
Professor Paul Chazot paul.chazot@durham.ac.uk
Editor
Abstract
Emotion is an important part of people's daily life, particularly relevant to the mental health of people. Emotional diagnosis is closely related to the nervous system, which can well reflect people's mental conditions in response to the surrounding environment or the development of various neurodegenerative diseases. Emotion recognition can help the medical diagnosis of mental health. In recent years, emotion recognition based on EEG has attracted the attention of many researchers accompanying with the continuous development of artificial intelligence and brain computer interface technology. In this paper, we carried out a comparison on the performance of three deep learning techniques on EEG classification, including DNN, CNN and CNN-LSTM. DEAP data set was used in our experiments. EEG signals were transformed from time domain to frequency domain first, and then features are extracted to classify emotions. From our research, it shows these deep learning techniques can achieve good accuracy on emotional diagnosis.
Citation
Liu, G., Zhang, Z., Jiang, R., Crookes, D., & Chazot, P. (2022). EEG-based Deep Emotional Diagnosis: A Comparative Study. In R. Jiang, L. Zhang, H. Wei, D. Crookes, & P. Chazot (Eds.), Recent Advances in AI-enabled Automated Medical Diagnosis. Routledge. https://doi.org/10.1201/9781003176121
Online Publication Date | Oct 20, 2022 |
---|---|
Publication Date | 2022 |
Deposit Date | Jul 15, 2022 |
Publicly Available Date | Oct 21, 2023 |
Publisher | Routledge |
Edition | 1st ed. |
Book Title | Recent Advances in AI-enabled Automated Medical Diagnosis |
ISBN | 9781032008431 |
DOI | https://doi.org/10.1201/9781003176121 |
Public URL | https://durham-repository.worktribe.com/output/1621580 |
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Copyright Statement
This is an Accepted Manuscript of a book chapter published by Routledge in Recent Advances in AI-enabled Automated Medical Diagnosis on 20 October 2022, available online: http://www.routledge.com/9781032008431
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