Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet

Driver fatigue is a significant safety concern in transportation systems, with the potential to cause accidents. Detecting and addressing driver fatigue in real time is crucial for improving road safety. This research paper introduces an innovative method for detecting driver fatigue using electroen...

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Main Authors: Rafiuddin, Abdubrani, Mahfuzah, Mustafa, Zarith Liyana, Zahari
Format: Conference or Workshop Item
Language:English
Published: Springer Nature 2024
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/43651/
http://umpir.ump.edu.my/id/eprint/43651/1/Enhancing%20driver%20fatigue%20detection%20accuracy%20in%20on-road%20driving%20systems%20using%20an%20LSTM-DNN%20hybrid%20model%20with%20modified%20Z-Score%20and%20morlet%20wavelet.PDF
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author Rafiuddin, Abdubrani
Mahfuzah, Mustafa
Zarith Liyana, Zahari
author_facet Rafiuddin, Abdubrani
Mahfuzah, Mustafa
Zarith Liyana, Zahari
author_sort Rafiuddin, Abdubrani
building UMP Institutional Repository
collection Online Access
description Driver fatigue is a significant safety concern in transportation systems, with the potential to cause accidents. Detecting and addressing driver fatigue in real time is crucial for improving road safety. This research paper introduces an innovative method for detecting driver fatigue using electroencephalogram (EEG) signals, enhanced by the Morlet mother wavelet and modified z-score feature. The Morlet wavelet is adapted to capture both temporal and frequency information from EEG signals associated with driver fatigue, while the modified z-score feature measures abnormal EEG activity. Three deep learning models, Long Short-Term Memory (LSTM), Deep Neural Network (DNN), and LSTM-DNN, are employed to classify the data. The LSTM model captures long-term dependencies, the DNN model learns complex relationships, and the hybrid LSTM-DNN model combines their strengths to improve classification accuracy. The proposed approach demonstrates its effectiveness through comprehensive experiments, achieving high accuracy, specificity, sensitivity, F1-score, and recall in driver fatigue detection. The LSTM-DNN hybrid model showed exceptional performance, achieving an accuracy of 99.99% in classifying EEG signals. This showcases its remarkable precision in accurately categorizing the signals. Additionally, the LSTM-DNN model exhibited a specificity of 99.98% and a sensitivity of 100.00%, indicating its capability to classify driver fatigue states accurately. Furthermore, the F1-score and recall for the LSTM-DNN model were 99.99% and 100.00%, respectively.
first_indexed 2025-11-15T03:52:36Z
format Conference or Workshop Item
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institution Universiti Malaysia Pahang
institution_category Local University
language English
last_indexed 2025-11-15T03:52:36Z
publishDate 2024
publisher Springer Nature
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spelling ump-436512025-01-24T01:29:28Z http://umpir.ump.edu.my/id/eprint/43651/ Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet Rafiuddin, Abdubrani Mahfuzah, Mustafa Zarith Liyana, Zahari TK Electrical engineering. Electronics Nuclear engineering Driver fatigue is a significant safety concern in transportation systems, with the potential to cause accidents. Detecting and addressing driver fatigue in real time is crucial for improving road safety. This research paper introduces an innovative method for detecting driver fatigue using electroencephalogram (EEG) signals, enhanced by the Morlet mother wavelet and modified z-score feature. The Morlet wavelet is adapted to capture both temporal and frequency information from EEG signals associated with driver fatigue, while the modified z-score feature measures abnormal EEG activity. Three deep learning models, Long Short-Term Memory (LSTM), Deep Neural Network (DNN), and LSTM-DNN, are employed to classify the data. The LSTM model captures long-term dependencies, the DNN model learns complex relationships, and the hybrid LSTM-DNN model combines their strengths to improve classification accuracy. The proposed approach demonstrates its effectiveness through comprehensive experiments, achieving high accuracy, specificity, sensitivity, F1-score, and recall in driver fatigue detection. The LSTM-DNN hybrid model showed exceptional performance, achieving an accuracy of 99.99% in classifying EEG signals. This showcases its remarkable precision in accurately categorizing the signals. Additionally, the LSTM-DNN model exhibited a specificity of 99.98% and a sensitivity of 100.00%, indicating its capability to classify driver fatigue states accurately. Furthermore, the F1-score and recall for the LSTM-DNN model were 99.99% and 100.00%, respectively. Springer Nature 2024 Conference or Workshop Item PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/43651/1/Enhancing%20driver%20fatigue%20detection%20accuracy%20in%20on-road%20driving%20systems%20using%20an%20LSTM-DNN%20hybrid%20model%20with%20modified%20Z-Score%20and%20morlet%20wavelet.PDF Rafiuddin, Abdubrani and Mahfuzah, Mustafa and Zarith Liyana, Zahari (2024) Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet. In: Proceedings of the 7th International Conference on Electrical, Control and Computer Engineering–Volume 1. InECCE 2023. Lecture Notes in Electrical Engineering. 7th International Conference on Electrical, Control & Computer Engineering 2023 (InECCE 2023) , 22nd August 2023 , Petaling Jaya, Selangor, Malaysia. pp. 359-371., 1212. ISBN 978-981-97-3846-5 (Published) https://doi.org/10.1007/978-981-97-3847-2_31
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Rafiuddin, Abdubrani
Mahfuzah, Mustafa
Zarith Liyana, Zahari
Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet
title Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet
title_full Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet
title_fullStr Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet
title_full_unstemmed Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet
title_short Enhancing driver fatigue detection accuracy in on-road driving systems using an LSTM-DNN hybrid model with modified Z-Score and morlet wavelet
title_sort enhancing driver fatigue detection accuracy in on-road driving systems using an lstm-dnn hybrid model with modified z-score and morlet wavelet
topic TK Electrical engineering. Electronics Nuclear engineering
url http://umpir.ump.edu.my/id/eprint/43651/
http://umpir.ump.edu.my/id/eprint/43651/
http://umpir.ump.edu.my/id/eprint/43651/1/Enhancing%20driver%20fatigue%20detection%20accuracy%20in%20on-road%20driving%20systems%20using%20an%20LSTM-DNN%20hybrid%20model%20with%20modified%20Z-Score%20and%20morlet%20wavelet.PDF