Deep learning for EEG data analysis

Electroencephalogram (EEG) is a multi-dimensional time-series brain signal that is highly information packed. While an EEG has high potential to serve in medicine (e.g. disease diagnosis, prognosis, pre-disease risk identification), psycho-physiology (e.g. mood classification, stress monitoring, ale...

Full description

Bibliographic Details
Main Author: Cheah, Kit Hwa
Format: Final Year Project / Dissertation / Thesis
Published: 2018
Subjects:
Online Access:http://eprints.utar.edu.my/2830/
http://eprints.utar.edu.my/2830/1/EE%2D2018%2D1302129%2D1.pdf
_version_ 1848885757961306112
author Cheah, Kit Hwa
author_facet Cheah, Kit Hwa
author_sort Cheah, Kit Hwa
building UTAR Institutional Repository
collection Online Access
description Electroencephalogram (EEG) is a multi-dimensional time-series brain signal that is highly information packed. While an EEG has high potential to serve in medicine (e.g. disease diagnosis, prognosis, pre-disease risk identification), psycho-physiology (e.g. mood classification, stress monitoring, alertness monitoring, sleep stage monitoring), brain-computer interface application (e.g. thought typing, prosthesis control), and many other areas, the classical design of EEG feature extraction algorithms and EEG classifiers is time-consuming and challenging to fully tap into the vast data embedded in the EEG. Deep learning (or deep neural network) which enables higher hierarchical representation of complex data has been strongly suggested by a wide range of recent research that these deep architectures of artificial neural network generally outperform the classical EEG feature extraction algorithms or classical EEG classifiers. In this project, deep neural network architectures have been constructed to perform binary classification on an EEG dataset that was shown by traditional EEG feature extraction methods to have no significant difference between its two data pools (resting EEG recorded before and recorded after listening to music). The convolutional neural network (CNN) model constructed in this project has achieved a validation accuracy of 75±1% using the same EEG dataset. Using the top performing CNN architectures, short duration of relaxing music listening is found to affect the EEG signals generated by the frontal lobe more than the other lobes of the brain; and also to affect the EEG generated by the left cerebral hemisphere more than the right hemisphere.
first_indexed 2025-11-15T19:27:41Z
format Final Year Project / Dissertation / Thesis
id utar-2830
institution Universiti Tunku Abdul Rahman
institution_category Local University
last_indexed 2025-11-15T19:27:41Z
publishDate 2018
recordtype eprints
repository_type Digital Repository
spelling utar-28302019-08-15T04:55:59Z Deep learning for EEG data analysis Cheah, Kit Hwa TK Electrical engineering. Electronics Nuclear engineering Electroencephalogram (EEG) is a multi-dimensional time-series brain signal that is highly information packed. While an EEG has high potential to serve in medicine (e.g. disease diagnosis, prognosis, pre-disease risk identification), psycho-physiology (e.g. mood classification, stress monitoring, alertness monitoring, sleep stage monitoring), brain-computer interface application (e.g. thought typing, prosthesis control), and many other areas, the classical design of EEG feature extraction algorithms and EEG classifiers is time-consuming and challenging to fully tap into the vast data embedded in the EEG. Deep learning (or deep neural network) which enables higher hierarchical representation of complex data has been strongly suggested by a wide range of recent research that these deep architectures of artificial neural network generally outperform the classical EEG feature extraction algorithms or classical EEG classifiers. In this project, deep neural network architectures have been constructed to perform binary classification on an EEG dataset that was shown by traditional EEG feature extraction methods to have no significant difference between its two data pools (resting EEG recorded before and recorded after listening to music). The convolutional neural network (CNN) model constructed in this project has achieved a validation accuracy of 75±1% using the same EEG dataset. Using the top performing CNN architectures, short duration of relaxing music listening is found to affect the EEG signals generated by the frontal lobe more than the other lobes of the brain; and also to affect the EEG generated by the left cerebral hemisphere more than the right hemisphere. 2018-05-03 Final Year Project / Dissertation / Thesis NonPeerReviewed application/pdf http://eprints.utar.edu.my/2830/1/EE%2D2018%2D1302129%2D1.pdf Cheah, Kit Hwa (2018) Deep learning for EEG data analysis. Final Year Project, UTAR. http://eprints.utar.edu.my/2830/
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Cheah, Kit Hwa
Deep learning for EEG data analysis
title Deep learning for EEG data analysis
title_full Deep learning for EEG data analysis
title_fullStr Deep learning for EEG data analysis
title_full_unstemmed Deep learning for EEG data analysis
title_short Deep learning for EEG data analysis
title_sort deep learning for eeg data analysis
topic TK Electrical engineering. Electronics Nuclear engineering
url http://eprints.utar.edu.my/2830/
http://eprints.utar.edu.my/2830/1/EE%2D2018%2D1302129%2D1.pdf