J. Hu and P. Wang, Noise robustness analysis of performance for EEG-based driver fatigue detection using different entropy feature sets, Entropy, vol.19, p.385, 2017.

L. C. Thomas, C. Gast, R. Grube, and K. Craig, Fatigue detection in commercial flight operations: results using physiological measures, Procedia Manuf, vol.3, pp.2357-2364, 2015.

D. F. Neri, S. A. Shappell, and C. A. Dejohn, Simulated sustained flight operations and performance, part 1: effects of fatigue, Mil. Psychol, vol.4, pp.137-155, 1992.

L. Chaari and O. Golubnitschaja, Covid-19 pandemic by the "real-time" monitoring: the Tunisian case and lessons for global epidemics in the context of 3PM strategies, EPMA J, 2020.

A. Sahayadhas, K. Sundaraj, and M. Murugappan, Electromyogram signal based hypovigilance detection, Biomed. Res. (India), vol.25, pp.281-288, 2014.

F. Wang, H. Wang, and R. Fu, Real-time ECG-based detection of fatigue driving using sample entropy, Entropy, vol.20, issue.3, p.196, 2018.

S. Ahn, T. Nguyen, H. Jang, J. G. Kim, and S. C. Jun, Exploring neuro-physiological correlates of drivers' mental fatigue caused by sleep deprivation using simultaneous EEG, ECG, and fNIRS data, Front. Hum. Neurosci, vol.10, p.219, 2016.

C. Basri, Muscle fatigue detections during arm movement using EMG signal, IOP Conf. Ser. Mater. Sci. Eng, vol.557, p.12004, 2019.

M. Z. Alom, A state-of-the-art survey on deep learning theory and architectures, Electronics, vol.8, issue.3, p.292, 2019.

S. Kiranyaz, T. Ince, O. Abdeljaber, O. Avci, and M. Gabbouj, 1-D convolutional neural networks for signal processing applications, ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing -Proceedings, pp.8360-8364, 2019.

K. Dwivedi, K. Biswaranjan, and A. Sethi, Drowsy driver detection using representation learning, IEEE International Advance Computing Conference, IACC, pp.995-999, 2014.

J. Yu, S. Park, S. Lee, and M. Jeon, Driver drowsiness detection using conditionadaptive representation learning framework, IEEE Trans. Intell. Transp. Syst, vol.20, pp.4206-4218, 2018.

M. Strmiska and Z. Koudelkova, Analysis of performance metrics using Emotiv EPOC+, MATEC Web Conf, vol.210, pp.4-7, 2018.

A. Laruelo, Hybrid sparse regularization for magnetic resonance spectroscopy, IEEE International Conference of Engineering in Medicine and Biology Society (EMBC), pp.3-7, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01148277

L. Chaari, J. Tourneret, and C. Chaux, Sparse signal recovery using a Bernouilli generalized gaussian prior, European Signal Processing Conference (EUSIPCO), 2015.

D. Surangsrirat and A. Intarapanich, Analysis of the meditation brainwave from consumer EEG device, IEEE SOUTHEASTCON, pp.1-6, 2015.

J. Solé-casals, A novel deep learning approach with data augmentation to classify motor imagery signals, IEEE Access, vol.7, pp.15945-15954, 2019.

J. J. Jung, Y. C. Youn, D. Camacho, G. Li, and C. H. Lee, Deep learning for EEG data analytics: a survey, Concurr. Comput, 2019.

A. Shaf, T. Ali, W. Farooq, S. Javaid, U. Draz et al., Two classes classification using different optimizers in convolutional neural network, International Multi-topic Conference (INMIC), pp.1-6, 2018.

A. Tafsast, K. Ferroudji, M. L. Hadjili, A. Bouakaz, and N. Benoudjit, Automatic microemboli characterization using convolutional neural networks and radio frequency signals, 2018 International Conference on Communications and Electrical Engineering (ICCEE), pp.1-4, 2018.

S. V. Reddy, K. T. Reddy, V. Vallikumari, B. T. Nugraha, R. Sarno et al., Optimization of deep learning using various optimizers, loss functions and dropout, Int. J. Innov. Technol. Explor. Eng, vol.22, pp.347-359, 2016.

R. Sarno, B. T. Nugraha, and M. N. Munawar, Real time fatigue-driver detection from electroencephalography using Emotiv EPOC+, Int. Rev. Comput. Softw. (IRE-COS, vol.11, p.214, 2016.

R. Osmalina and A. Rahmatillah, Drowsiness analysis using common spatial pattern and extreme learning machine based on electroencephalogram signal, J. Med. Signals Sens, vol.9, issue.2, pp.130-136, 2019.