MOTOR IMAGERY CLASSIFICATION FOR BCI USING STOCKWELL TRANSFORM, DEEP METRIC LEARNING, AND DCNN WITH MIXUP AUGMENTATION

ALWASITI, HAIDER (2021) MOTOR IMAGERY CLASSIFICATION FOR BCI USING STOCKWELL TRANSFORM, DEEP METRIC LEARNING, AND DCNN WITH MIXUP AUGMENTATION. PhD. thesis, Universiti Teknologi PETRONAS.

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Abstract

Inter-individual EEG variability is a major issue limiting the performance of
Brain-Computer Interface (BCI) classifiers. However, most previous deep learning
(DL) models are still using the dataset of multiple subjects to train a single model due
to the limited augmentation techniques available for EEG signals, and the difficulty of
collecting large EEG datasets from each subject. Building a DL model that can be
trained on an extremely small EEG training set of a single subject presents an
interesting challenge that this work is trying to address. The deep metric learning
(DML) model is known for the ability to converge on a small dataset, however, this
kind of model has not been studied yet on BCI EEG signals.

Item Type: Thesis (PhD.)
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Departments / MOR / COE: Engineering > Electrical and Electronic
Depositing User: Mr Ahmad Suhairi Mohamed Lazim
Date Deposited: 08 Sep 2021 16:04
Last Modified: 08 Sep 2021 16:04
URI: http://utpedia.utp.edu.my/id/eprint/20726

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