The classification of EEG-based winking signals: A transfer learning and random forest pipeline

Brain Computer-Interface (BCI) technology plays a considerable role in the control of rehabilitation or peripheral devices for stroke patients. This is particularly due to their inability to control such devices from their inherent physical limitations after such an attack. More often than not, the...

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Published in:PeerJ
Main Author: Mahendra Kumar J.L.; Rashid M.; Musa R.M.; Mohd Razman M.A.; Sulaiman N.; Jailani R.; Abdul Majeed A.P.P.
Format: Article
Language:English
Published: PeerJ Inc. 2021
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85103468317&doi=10.7717%2fpeerj.11182&partnerID=40&md5=d617f7b6d148581e5bb4c0b170791da8
id 2-s2.0-85103468317
spelling 2-s2.0-85103468317
Mahendra Kumar J.L.; Rashid M.; Musa R.M.; Mohd Razman M.A.; Sulaiman N.; Jailani R.; Abdul Majeed A.P.P.
The classification of EEG-based winking signals: A transfer learning and random forest pipeline
2021
PeerJ
9

10.7717/peerj.11182
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85103468317&doi=10.7717%2fpeerj.11182&partnerID=40&md5=d617f7b6d148581e5bb4c0b170791da8
Brain Computer-Interface (BCI) technology plays a considerable role in the control of rehabilitation or peripheral devices for stroke patients. This is particularly due to their inability to control such devices from their inherent physical limitations after such an attack. More often than not, the control of such devices exploits electroencephalogram (EEG) signals. Nonetheless, it is worth noting that the extraction of the features and the classification of the signals is non-trivial for a successful BCI system. The use of Transfer Learning (TL) has been demonstrated to be a powerful tool in the extraction of essential features. However, the employment of such a method towards BCI applications, particularly in regard to EEG signals, are somewhat limited. The present study aims to evaluate the effectiveness of different TL models in extracting features for the classification of wink-based EEG signals. The extracted features are classified by means of fine-tuned Random Forest (RF) classifier. The raw EEG signals are transformed into a scalogram image via Continuous Wavelet Transform (CWT) before it was fed into the TL models, namely InceptionV3, Inception ResNetV2, Xception and MobileNet. The dataset was divided into training, validation, and test datasets, respectively, via a stratified ratio of 60:20:20. The hyperparameters of the RF models were optimised through the grid search approach, in which the five-fold cross-validation technique was adopted. The optimised RF classifier performance was compared with the conventional TL-based CNN classifier performance. It was demonstrated from the study that the best TL model identified is the Inception ResNetV2 along with an optimised RF pipeline, as it was able to yield a classification accuracy of 100% on both the training and validation dataset. Therefore, it could be established from the study that a comparable classification efficacy is attainable via the Inception ResNetV2 with an optimised RF pipeline. It is envisaged that the implementation of the proposed architecture to a BCI system would potentially facilitate post-stroke patients to lead a better life quality. Copyright 2021 Mahendra Kumar et al.
PeerJ Inc.
21678359
English
Article
All Open Access; Gold Open Access; Green Open Access
author Mahendra Kumar J.L.; Rashid M.; Musa R.M.; Mohd Razman M.A.; Sulaiman N.; Jailani R.; Abdul Majeed A.P.P.
spellingShingle Mahendra Kumar J.L.; Rashid M.; Musa R.M.; Mohd Razman M.A.; Sulaiman N.; Jailani R.; Abdul Majeed A.P.P.
The classification of EEG-based winking signals: A transfer learning and random forest pipeline
author_facet Mahendra Kumar J.L.; Rashid M.; Musa R.M.; Mohd Razman M.A.; Sulaiman N.; Jailani R.; Abdul Majeed A.P.P.
author_sort Mahendra Kumar J.L.; Rashid M.; Musa R.M.; Mohd Razman M.A.; Sulaiman N.; Jailani R.; Abdul Majeed A.P.P.
title The classification of EEG-based winking signals: A transfer learning and random forest pipeline
title_short The classification of EEG-based winking signals: A transfer learning and random forest pipeline
title_full The classification of EEG-based winking signals: A transfer learning and random forest pipeline
title_fullStr The classification of EEG-based winking signals: A transfer learning and random forest pipeline
title_full_unstemmed The classification of EEG-based winking signals: A transfer learning and random forest pipeline
title_sort The classification of EEG-based winking signals: A transfer learning and random forest pipeline
publishDate 2021
container_title PeerJ
container_volume 9
container_issue
doi_str_mv 10.7717/peerj.11182
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85103468317&doi=10.7717%2fpeerj.11182&partnerID=40&md5=d617f7b6d148581e5bb4c0b170791da8
description Brain Computer-Interface (BCI) technology plays a considerable role in the control of rehabilitation or peripheral devices for stroke patients. This is particularly due to their inability to control such devices from their inherent physical limitations after such an attack. More often than not, the control of such devices exploits electroencephalogram (EEG) signals. Nonetheless, it is worth noting that the extraction of the features and the classification of the signals is non-trivial for a successful BCI system. The use of Transfer Learning (TL) has been demonstrated to be a powerful tool in the extraction of essential features. However, the employment of such a method towards BCI applications, particularly in regard to EEG signals, are somewhat limited. The present study aims to evaluate the effectiveness of different TL models in extracting features for the classification of wink-based EEG signals. The extracted features are classified by means of fine-tuned Random Forest (RF) classifier. The raw EEG signals are transformed into a scalogram image via Continuous Wavelet Transform (CWT) before it was fed into the TL models, namely InceptionV3, Inception ResNetV2, Xception and MobileNet. The dataset was divided into training, validation, and test datasets, respectively, via a stratified ratio of 60:20:20. The hyperparameters of the RF models were optimised through the grid search approach, in which the five-fold cross-validation technique was adopted. The optimised RF classifier performance was compared with the conventional TL-based CNN classifier performance. It was demonstrated from the study that the best TL model identified is the Inception ResNetV2 along with an optimised RF pipeline, as it was able to yield a classification accuracy of 100% on both the training and validation dataset. Therefore, it could be established from the study that a comparable classification efficacy is attainable via the Inception ResNetV2 with an optimised RF pipeline. It is envisaged that the implementation of the proposed architecture to a BCI system would potentially facilitate post-stroke patients to lead a better life quality. Copyright 2021 Mahendra Kumar et al.
publisher PeerJ Inc.
issn 21678359
language English
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accesstype All Open Access; Gold Open Access; Green Open Access
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