EEG-based evaluation of mental fatigue using machine learning algorithms
When people are exhausted both physically and mentally from overexertion, they experience fatigue. Fatigue can lead to a decrease in motivation and vigilance which may result in certain accidents or injuries. It is crucial to monitor fatigue in workplace for safety reasons and well-being of the work...
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sg-ntu-dr.10356-1459982021-01-23T20:11:18Z EEG-based evaluation of mental fatigue using machine learning algorithms Liu, Yisi Lan, Zirui Khoo, Glenn Han Hua Li, Holden King Ho Sourina, Olga Mueller-Wittig, Wolfgang 2018 International Conference on Cyberworlds (CW) Fraunhofer Singapore Engineering::Electrical and electronic engineering Machine Learning Fatigue When people are exhausted both physically and mentally from overexertion, they experience fatigue. Fatigue can lead to a decrease in motivation and vigilance which may result in certain accidents or injuries. It is crucial to monitor fatigue in workplace for safety reasons and well-being of the workers. In this paper, Electroencephalogram (EEG)-based evaluation of mental fatigue is investigated using the state-ofthe-art machine learning algorithms. An experiment lasted around 2 hours and 30 minutes was designed and carried out to induce four levels of fatigue and collect EEG data from seven subjects. The results show that for subject-dependent 4-level fatigue recognition, the best average accuracy of 93.45% was achieved by using 6 statistical features with a linear SVM classifier. With subject-independent approach, the best average accuracy of 39.80% for 4 levels was achieved by using fractal dimension, 6 statistical features and a linear discriminant analysis classifier. The EEG-based fatigue recognition has the potential to be used in workplace such as cranes to monitor the fatigue of operators who are often subjected to long working hours with heavy workloads. National Research Foundation (NRF) Accepted version This research is supported by the National Research Foundation, Prime Minister’s Office, Singapore under its International Research Centres in Singapore Funding Initiative. 2021-01-20T03:15:41Z 2021-01-20T03:15:41Z 2018 Conference Paper Liu, Y., Lan, Z., Khoo, G. H. H., Li, H. K. H., Sourina, O., & Mueller-Wittig, W. (2018). EEG-based evaluation of mental fatigue using machine learning algorithms. Proceedings of the International Conference on Cyberworlds, 276-279. doi:10.1109/CW.2018.00056 9781538673157 https://hdl.handle.net/10356/145998 10.1109/CW.2018.00056 2-s2.0-85061437129 276 279 en © 2018 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. The published version is available at: https://doi.org/10.1109/CW.2018.00056 application/pdf |
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Engineering::Electrical and electronic engineering Machine Learning Fatigue Liu, Yisi Lan, Zirui Khoo, Glenn Han Hua Li, Holden King Ho Sourina, Olga Mueller-Wittig, Wolfgang EEG-based evaluation of mental fatigue using machine learning algorithms |
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When people are exhausted both physically and mentally from overexertion, they experience fatigue. Fatigue can lead to a decrease in motivation and vigilance which may result in certain accidents or injuries. It is crucial to monitor fatigue in workplace for safety reasons and well-being of the workers. In this paper, Electroencephalogram (EEG)-based evaluation of mental fatigue is investigated using the state-ofthe-art machine learning algorithms. An experiment lasted around 2 hours and 30 minutes was designed and carried out to induce four levels of fatigue and collect EEG data from seven subjects. The results show that for subject-dependent 4-level fatigue recognition, the best average accuracy of 93.45% was achieved by using 6 statistical features with a linear SVM classifier. With subject-independent approach, the best average accuracy of 39.80% for 4 levels was achieved by using fractal dimension, 6 statistical features and a linear discriminant analysis classifier. The EEG-based fatigue recognition has the potential to be used in workplace such as cranes to monitor the fatigue of operators who are often subjected to long working hours with heavy workloads. |
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2018 International Conference on Cyberworlds (CW) |
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2018 International Conference on Cyberworlds (CW) Liu, Yisi Lan, Zirui Khoo, Glenn Han Hua Li, Holden King Ho Sourina, Olga Mueller-Wittig, Wolfgang |
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Conference or Workshop Item |
author |
Liu, Yisi Lan, Zirui Khoo, Glenn Han Hua Li, Holden King Ho Sourina, Olga Mueller-Wittig, Wolfgang |
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Liu, Yisi |
title |
EEG-based evaluation of mental fatigue using machine learning algorithms |
title_short |
EEG-based evaluation of mental fatigue using machine learning algorithms |
title_full |
EEG-based evaluation of mental fatigue using machine learning algorithms |
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EEG-based evaluation of mental fatigue using machine learning algorithms |
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EEG-based evaluation of mental fatigue using machine learning algorithms |
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eeg-based evaluation of mental fatigue using machine learning algorithms |
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2021 |
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https://hdl.handle.net/10356/145998 |
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