Classification of EEG Motor Imagery Tasks Using Convolution Neural Networks

Electroencephalograph (EEG) is a highly nonlinear data and very difficult to be classified. The EEG signal is commonly used in the area of Brain-Computer Interface (BCI). The signal can be used as an operative command for directional movements for a powered wheelchair to assist people with disabilit...

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Bibliographic Details
Published inConference proceedings (IEEE Engineering in Medicine and Biology Society. Conf.) Vol. 2019; pp. 758 - 761
Main Authors Ling, Sai Ho, Makgawinata, Henry, Monsivais, Fernando Huerta, dos Santos Goncalves Lourenco, Andre, Lyu, Juan, Chai, Rifai
Format Conference Proceeding Journal Article
LanguageEnglish
Published United States IEEE 01.07.2019
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ISSN1557-170X
1558-4615
DOI10.1109/EMBC.2019.8857933

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Summary:Electroencephalograph (EEG) is a highly nonlinear data and very difficult to be classified. The EEG signal is commonly used in the area of Brain-Computer Interface (BCI). The signal can be used as an operative command for directional movements for a powered wheelchair to assist people with disability in performing the daily activity.In this paper, we aim to classify Electroencephalograph EEG signals extracted from subjects which had been trained to perform four Motoric Imagery (MI) tasks for two classes. The classification will be processed via a Convolutional Neural Network (CNN) utilising all 22 electrodes based on 10-20 system placement. The EEG datasets will be transformed into scaleogram using Continuous Wavelet Transform (CWT) method.We evaluated two different types of image configuration, i.e. layered and stacked input datasets. Our procedure starts from denoising the EEG signals, employing Bump CWT from 8-32 Hz brain wave. Our CNN architecture is based on the Visual Geometry Group (VGG-16) network. Our results show that layered image dataset yields a high accuracy with an average of 68.33% for two classes classification.
ISSN:1557-170X
1558-4615
DOI:10.1109/EMBC.2019.8857933