A. Gevins and M. E. Smith, Electroencephalography (eeg) in neuroergonomics, pp.15-31, 2006.

B. Z. Allison and J. Polich, Workload assessment of computer gaming using a single-stimulus event-related potential paradigm, Biological psychology, vol.77, issue.3, pp.277-283, 2008.

R. N. Roy, S. Charbonnier, A. Campagne, and S. Bonnet, Efficient mental workload estimation using task-independent EEG features, Journal of neural engineering, vol.13, issue.2, p.26019, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01274251

A. Brouwer, M. A. Hogervorst, J. B. Van-erp, T. Heffelaar, P. H. Zimmerman et al., Estimating workload using eeg spectral power and erps in the n-back task, Journal of neural engineering, vol.9, issue.4, p.45008, 2012.

A. Stipacek, R. Grabner, C. Neuper, A. Fink, and A. Neubauer, Sensitivity of human eeg alpha band desynchronization to different working memory components and increasing levels of memory load, Neuroscience letters, vol.353, issue.3, pp.193-196, 2003.

P. Missonnier, M. Deiber, G. Gold, P. Millet, M. G. .-f.-pun et al., Frontal theta event-related synchronization: comparison of directed attention and working memory load effects, Journal of Neural Transmission, vol.113, issue.10, pp.1477-1486, 2006.

P. Antonenko, F. Paas, R. Grabner, and T. Van-gog, Using electroencephalography to measure cognitive load, Educational Psychology Review, vol.22, issue.4, pp.425-438, 2010.

R. N. Roy, S. Bonnet, S. Charbonnier, and A. Campagne, Mental fatigue and working memory load estimation: interaction and implications for eeg-based passive bci, 2013 35th annual international conference of the IEEE Engineering in Medicine and Biology Society (EMBC), pp.6607-6610, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00862975

G. Durantin, J. Gagnon, S. Tremblay, and F. Dehais, Using near infrared spectroscopy and heart rate variability to detect mental overload, Behavioural brain research, vol.259, pp.16-23, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00996701

T. Gateau, H. Ayaz, and F. Dehais, In silico versus over the clouds: On-the-fly mental state estimation of aircraft pilots, using a functional near infrared spectroscopy based passive-bci, Frontiers in human neuroscience, vol.12, p.187, 2018.

K. J. Verdière, R. N. Roy, and F. Dehais, Detecting pilot's engagement using fnirs connectivity features in an automated vs. manual landing scenario, Frontiers in human neuroscience, vol.12, p.6, 2018.

F. Dehais, A. Duprès, S. Blum, N. Drougard, S. Scannella et al., Monitoring pilots mental workload using ERPs and spectral power with a six-dry-electrode EEG system in real flight conditions, Sensors, vol.19, issue.6, p.1324, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02100934

C. A. Authority, Monitoring matters, guidance on the development of pilot monitoring skills, CAA Paper, vol.2, 2013.

I. , Guidance material for improving flight crew monitoring, IATA Paper, 2016.

F. Dehais, J. Behrend, V. Peysakhovich, M. Causse, and C. D. Wickens, Pilot flying and pilot monitorings aircraft state awareness during go-around execution in aviation: A behavioral and eye tracking study, The International Journal of Aerospace Psychology, vol.27, issue.1-2, pp.15-28, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01655050

M. Reynal, Y. Colineaux, A. Vernay, and F. Dehais, Pilot flying vs. pilot monitoring during the approach phase: An eye-tracking study, Proceedings of the International Conference on Human-Computer Interaction in Aerospace, p.7, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01682792

R. V. Palumbo, M. E. Marraccini, L. L. Weyandt, O. Wilder-smith, H. A. Mcgee et al., Interpersonal autonomic physiology: A systematic review of the literature, Personality and Social Psychology Review, vol.21, issue.2, pp.99-141, 2017.

P. R. Montague, G. S. Berns, J. D. Cohen, S. M. Mcclure, G. Pagnoni et al., Hyperscanning: simultaneous fmri during linked social interactions, 2002.

F. Babiloni and L. Astolfi, Social neuroscience and hyperscanning techniques: past, present and future, Neuroscience & Biobehavioral Reviews, vol.44, pp.76-93, 2014.

R. H. Stevens, T. L. Galloway, and A. Willemsen-dunlap, Neuroergonomics: Quantitative modeling of individual, shared, and team neurodynamic information, Human factors, vol.60, issue.7, pp.1022-1034, 2018.

J. Toppi, G. Borghini, M. Petti, E. J. He, V. De-giusti et al., Investigating cooperative behavior in ecological settings: an eeg hyperscanning study, PloS one, vol.11, issue.4, p.154236, 2016.

L. Korczowski, M. Congedo, and C. Jutten, Single-trial classification of multi-user p300-based brain-computer interface using riemannian geometry, 2015 37th annual international conference of the IEEE engineering in medicine and biology society (EMBC), pp.1769-1772, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01191913

J. R. Comstock and R. J. Arnegard, The multi-attribute task battery for human operator workload and strategic behavior research, 1992.

S. G. Hart and L. E. Staveland, Development of nasa-tlx (task load index): Results of empirical and theoretical research, Advances in psychology, vol.52, pp.139-183, 1988.

C. Kothe, Lab streaming layer (lsl), Accessed on October, vol.26, p.2015, 2014.

T. Mullen, C. Kothe, Y. M. Chi, A. Ojeda, T. Kerth et al., Real-time modeling and 3d visualization of source dynamics and connectivity using wearable eeg, 2013 35th annual international conference of the IEEE engineering in medicine and biology society (EMBC), pp.2184-2187, 2013.

F. Lotte, L. Bougrain, A. Cichocki, M. Clerc, M. Congedo et al., A review of classification algorithms for eeg-based brain-computer interfaces: a 10 year update, Journal of neural engineering, vol.15, issue.3, p.31005, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01846433

E. Combrisson and K. Jerbi, Exceeding chance level by chance: The caveat of theoretical chance levels in brain signal classification and statistical assessment of decoding accuracy, Journal of neuroscience methods, vol.250, pp.126-136, 2015.

R. N. Roy, S. Bonnet, S. Charbonnier, and A. Campagne, Mental fatigue and working memory load estimation: interaction and implications for eeg-based passive bci, 2013 35th annual international conference of the IEEE Engineering in Medicine and Biology Society (EMBC), pp.6607-6610, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00862975

S. Makeig, A. J. Bell, T. Jung, and T. J. Sejnowski, Independent component analysis of electroencephalographic data, Advances in neural information processing systems, pp.145-151, 1996.

R. D. Pascual-marqui, M. Esslen, K. Kochi, and D. Lehmann, Functional imaging with low-resolution brain electromagnetic tomography (loreta): a review, Methods and findings in experimental and clinical pharmacology, vol.24, pp.91-95, 2002.

S. Charbonnier, R. N. Roy, R. Dole?alová, A. Campagne, and S. Bonnet, Estimation of working memory load using EEG connectivity measures, Proceedings of the 9th International Joint Conference on, vol.4, pp.122-128, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01274263

S. Charbonnier, R. N. Roy, S. Bonnet, and A. Campagne, EEG index for control operators mental fatigue monitoring using interactions between brain regions, Expert Systems with Applications, vol.52, pp.91-98, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01310929

K. Chiang, C. Wei, M. Nakanishi, and T. Jung, Cross-subject transfer learning on high-speed steady-state visual evoked potentialbased brain-computer interface, 2018.