Mental workload classification in n-back tasks based on single trial EEG

Mental workload estimation has been under extensive investigation over the years, because the capability of monitoring the cognitive workload enables the prevention of cognitive overloading and improvement of workplace safety. Electroencephalogram (EEG) signals has been found to be an objective and...

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Main Authors: Dai, Zhongxiang, Bezerianos, Anastasios, Chen, Annabel Shen-Hsing, Sun, Yu
Other Authors: School of Social Sciences
Format: Article
Language:English
Published: 2018
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Online Access:https://hdl.handle.net/10356/89658
http://hdl.handle.net/10220/46720
http://yqyb.etmchina.com/yqyb/ch/reader/view_abstract.aspx?file_no=J1601227&flag=1
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-896582019-12-10T14:41:31Z Mental workload classification in n-back tasks based on single trial EEG Dai, Zhongxiang Bezerianos, Anastasios Chen, Annabel Shen-Hsing Sun, Yu School of Social Sciences DRNTU::Social sciences::Psychology Electroencephalogram Single-trial Mental workload estimation has been under extensive investigation over the years, because the capability of monitoring the cognitive workload enables the prevention of cognitive overloading and improvement of workplace safety. Electroencephalogram (EEG) signals has been found to be an objective and non intrusive measure of mental workload. However, the evaluation of cognitive workload based on single trial EEG data, which is an essential step towards real time workload monitoring and brain computer interface, has been a major challenge. Recently, a number of advanced feature extraction methods and machine learning algorithms have been employed in EEG based mental workload assessment. In this study, we performed single trial workload classification using the EEG data recorded during the performance of n back tasks with 2 levels of difficulty (corresponding to low and high levels of workload respectively), examined the effectiveness of 3 types of feature extraction (spectral power, discrete wavelet transform and common spatial filtering), and evaluated the performance of 4 classification algorithms (support vector machine, K nearest neighbors, random forest and gradient boosting classifiers). Our findings indicate that common spatial filtering was the best performing individual feature extraction method for single trial based workload classification, and the optimal performance was achieved by combining the features from either spectral power or discrete wavelet transform with those from common spatial filtering, and adopting the random forest classifier. This study might provide some helpful guidance on the selection of feature extraction methods as well as machine learning algorithms in mental workload evaluation based on single trial EEG data. Published version 2018-11-28T08:54:38Z 2019-12-06T17:30:31Z 2018-11-28T08:54:38Z 2019-12-06T17:30:31Z 2017 Journal Article Dai, Z., Bezerianos, A., Chen, A. S.-H., & Sun, Y. (2017). Mental workload classification in n-back tasks based on single trial EEG. Chinese Journal of Scientific Instrument, 38(6), 1335-1344. 0254-3087 https://hdl.handle.net/10356/89658 http://hdl.handle.net/10220/46720 http://yqyb.etmchina.com/yqyb/ch/reader/view_abstract.aspx?file_no=J1601227&flag=1 en Chinese Journal of Scientific Instrument © 2017 《仪器仪表学报》杂志社. This paper was published in Chinese Journal of Scientific Instrument and is made available as an electronic reprint (preprint) with permission of 《仪器仪表学报》杂志社. The published version is available at: [http://yqyb.etmchina.com/yqyb/ch/reader/view_abstract.aspx?file_no=J1601227&flag=1]. One print or electronic copy may be made for personal use only. Systematic or multiple reproduction, distribution to multiple locations via electronic or other means, duplication of any material in this paper for a fee or for commercial purposes, or modification of the content of the paper is prohibited and is subject to penalties under law. 10 p. application/pdf
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Social sciences::Psychology
Electroencephalogram
Single-trial
spellingShingle DRNTU::Social sciences::Psychology
Electroencephalogram
Single-trial
Dai, Zhongxiang
Bezerianos, Anastasios
Chen, Annabel Shen-Hsing
Sun, Yu
Mental workload classification in n-back tasks based on single trial EEG
description Mental workload estimation has been under extensive investigation over the years, because the capability of monitoring the cognitive workload enables the prevention of cognitive overloading and improvement of workplace safety. Electroencephalogram (EEG) signals has been found to be an objective and non intrusive measure of mental workload. However, the evaluation of cognitive workload based on single trial EEG data, which is an essential step towards real time workload monitoring and brain computer interface, has been a major challenge. Recently, a number of advanced feature extraction methods and machine learning algorithms have been employed in EEG based mental workload assessment. In this study, we performed single trial workload classification using the EEG data recorded during the performance of n back tasks with 2 levels of difficulty (corresponding to low and high levels of workload respectively), examined the effectiveness of 3 types of feature extraction (spectral power, discrete wavelet transform and common spatial filtering), and evaluated the performance of 4 classification algorithms (support vector machine, K nearest neighbors, random forest and gradient boosting classifiers). Our findings indicate that common spatial filtering was the best performing individual feature extraction method for single trial based workload classification, and the optimal performance was achieved by combining the features from either spectral power or discrete wavelet transform with those from common spatial filtering, and adopting the random forest classifier. This study might provide some helpful guidance on the selection of feature extraction methods as well as machine learning algorithms in mental workload evaluation based on single trial EEG data.
author2 School of Social Sciences
author_facet School of Social Sciences
Dai, Zhongxiang
Bezerianos, Anastasios
Chen, Annabel Shen-Hsing
Sun, Yu
format Article
author Dai, Zhongxiang
Bezerianos, Anastasios
Chen, Annabel Shen-Hsing
Sun, Yu
author_sort Dai, Zhongxiang
title Mental workload classification in n-back tasks based on single trial EEG
title_short Mental workload classification in n-back tasks based on single trial EEG
title_full Mental workload classification in n-back tasks based on single trial EEG
title_fullStr Mental workload classification in n-back tasks based on single trial EEG
title_full_unstemmed Mental workload classification in n-back tasks based on single trial EEG
title_sort mental workload classification in n-back tasks based on single trial eeg
publishDate 2018
url https://hdl.handle.net/10356/89658
http://hdl.handle.net/10220/46720
http://yqyb.etmchina.com/yqyb/ch/reader/view_abstract.aspx?file_no=J1601227&flag=1
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