G. Pfurtscheller, C. Guger, G. Müller, G. Krausz, and C. Neuper, Brain oscillations control hand orthosis in a tetraplegic, Neuroscience Letters, vol.292, issue.3, pp.1471-1474, 2000.

M. F. Pike, H. A. Maior, M. Porcheron, S. C. Sharples, and M. L. Wilson, Measuring the Effect of Think Aloud Protocols on Workload Using fNIRS, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems-CHI'14, pp.3807-3816, 2014.

D. Afergan, Dynamic Difficulty Using Brain Metrics of Workload, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems, pp.3797-3806, 2014.

E. V. Friedrich, R. Scherer, and C. Neuper, The effect of distinct mental strategies on classification performance for brain-computer interfaces, International Journal of Psychophysiology, vol.84, issue.1, pp.86-94, 2012.

K. Lafleur, Quadcopter control in three-dimensional space using a noninvasive motor imagery based brain-computer interface, Journal of neural engineering, vol.10, issue.4, 2013.

J. R. Millán and J. Mouriño, Asynchronous BCI and local neural classifiers: An overview of the adaptive brain interface project, IEEE Trans. Neural Syst. Rehabil. Eng, vol.11, issue.2, pp.159-161, 2003.

L. Bonnet, F. Lotte, and A. Lecuyer, Two Brains, One Game: Design and Evaluation of a Multi-User BCI Video Game Based on Motor Imagery, IEEE Transactions on Computational Intelligence and AI in games, vol.5, pp.185-198, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00784886

B. Blankertz, Neurophysiological predictor of SMR-based BCI performance, NeuroImage, vol.51, pp.1303-1309, 2010.

A. R. Halpern and R. J. Zatorre, When That Tune Runs Through Your Head: A PET Investigation of Auditory Imagery for Familiar Melodies, Cereb. Cortex, vol.9, issue.7, pp.697-704, 1999.

X. Pei, D. Barbour, E. C. Leuthardt, and G. Schalk, Decoding Vowels and Consonants in Spoken and Imagined Words Using Electrocorticographic Signals in Humans, Journal of Neural Engineering, vol.8, issue.4, p.46028, 2011.

J. Klopp, E. Halgren, K. Marinkovic, and V. Nenov, Face-selective spectral changes in the human fusiform gyrus, Clinical Neurophysiology, vol.110, pp.676-682, 1999.

D. R. Vogel, G. W. Dickson, and J. A. Lehman, Persuasion and the Role of Visual Presentation Support: The UM/3M Study, 1986.

M. C. Potter, B. Wyble, C. E. Hagmann, and E. S. Mccourt, Detecting meaning in RSVP at 13 ms per picture, Atten Percept Psychophys, vol.76, 2014.

G. Ganis, W. L. Thompson, F. W. Mast, and S. M. Kosslyn, Visual imagery in cerebral visual dysfunction, Neurol Clin, vol.21, issue.3, pp.631-646, 2003.

M. Knauff, J. Kassubek, T. Mulack, and M. W. Greenlee, Cortical activation evoked by visual mental imagery as measured by functional MRI, NeuroReport, vol.11, pp.3957-3962, 2000.

D. Carmel and S. Bentin, Domain specificity versus expertise: factors influencing distinct processing of faces, Cognition, vol.83, pp.162-169, 2002.

K. Grill-spector, The neural basis of object perception. Neural Basis Object Percept, vol.13, pp.40-40, 2003.

R. J. Itier and M. J. Taylor, N170 or N1? Spatiotemporal Differences between Object and Face Processing Using ERPs, Cereb. Cortex, vol.14, issue.2, pp.132-142, 2004.

P. Shenoy and D. S. Tan, Human-Aided Computing: Utilizing Implicit Human Processing to Classify Images, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems, pp.845-854, 2008.

I. Simanova, M. Gerven, R. Oostenveld, and P. Hagoort, Identifying object categories from event-related EEG: toward decoding of conceptual representations, PLoS One, vol.5, issue.12, pp.144-65, 2010.

, Scientific REPoRTS |, vol.8, 2018.

N. Kosmyna, F. Tarpin-bernard, and B. Rivet, Operationalization of Conceptual Imagery for BCIs, Proceedings of the European Signal Processing Conference EUSIPCO, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01208428

G. W. Humphreys and E. M. Forde, Hierarchies, similarity, and interactivity in object recognition: "category-specific" neuropsychological deficits, Behav Brain Sci, vol.24, pp.453-76, 2008.

L. L. Chao, J. V. Haxby, and A. Martin, Attribute-based neural substrates in temporal cortex for perceiving and knowing about objects, Nat Neurosci, vol.2, pp.913-919, 1999.

B. Z. Mahon and A. Caramazza, Concepts and categories: a cognitive neuropsychological perspective, Annu Rev Psychol, vol.60, pp.27-51, 2009.

N. Pinto, D. D. Cox, and J. J. Dicarlo, Why is real-world visual object recognition hard?, PLoS Comput Biol, vol.4, p.27, 2008.

G. Pfurtscheller, A. Stancak, and C. Neuper, Event-related synchronization (ERS) in the alpha band-an electrophysiological correlate of cortical idling: a review, Int. J. Psychophysiol, vol.24, pp.39-46, 1996.

H. T. Schupp, W. Lutzenberger, N. Birbaumer, W. Miltner, and C. Braun, Neurophysiological differences between perception and imagery, Cognitive Brain Research, vol.2, issue.2, pp.77-86, 1994.

J. D. Williams, G. Rippon, B. M. Stone, and J. Annett, Psychophysiological correlates of dynamic imagery, Br. J. Psychol, vol.86, pp.283-300, 1995.

W. J. Ray and H. W. Cole, EEG activity during cognitive processing: influence of attentional factors, Int. J. Psycho-physiol, vol.3, pp.43-48, 1985.

W. J. Ray and H. W. Cole, EEG alpha activity reflects attentional demands, and beta activity reflects emotional and cognitive processes, Science, vol.228, pp.750-752, 1985.

E. Klinger, K. C. Gregoire, and S. G. Barta, Physiological correlates of mental activity: eye movements, alpha, and heart rate during imagining, suppression, concentration, search, and choice, Psychophysiology, vol.10, pp.471-477, 1973.

W. Klimesch, H. Schimke, G. Ladurner, and G. Pfurtscheller, Alpha frequency and memory performance, J. Psychophysiol, vol.4, pp.381-390, 1990.

N. R. Cooper, R. J. Croft, S. J. Dominey, A. P. Burgess, and J. H. Gruzelier, Paradox lost? Exploring the role of alpha oscillations during externally vs. internally directed attention and the implications for idling and inhibition hypotheses, Int. J. Psychophysiol, vol.47, pp.65-74, 2003.

W. Klimesch, M. Doppelmayr, D. Rohm, D. Pollhuber, and W. Stadler, Simultaneous desynchronization and synchronization of different alpha responses in the human electroencephalograph: a neglected paradox, Neurosci. Lett, vol.284, pp.97-100, 2000.

T. A. Rihs, C. M. Michel, and G. Thut, Mechanisms of selective inhibition in visual spatial attention are indexed by ?-band EEG synchronization, European Journal of Neuroscience, vol.25, pp.603-610, 2007.

P. Sauseng, EEG alpha synchronization and functional coupling during top-down processing in a working memory task, Human Brain Mapping, vol.26, pp.148-155, 2005.

V. Stein, A. Sarnthein, and J. , Different frequencies for different scales of cortical integration: From local gamma to long range alpha/ theta synchronization, International Journal of Psychophysiology, vol.38, pp.301-313, 2000.

J. N. Frey, P. Ruhnau, and N. Weisz, Not so different after all: The same oscillatory processes support different types of attention, Brain Research, vol.1626, pp.183-197, 2015.

S. D. Power, A. Kushki, and T. Chau, Towards a system-paced near-infrared spectroscopy brain-computer interface: differentiating prefrontal activity due to mental arithmetic and mental singing from the no-control state, Journal of Neural Engineering, vol.8, issue.6, 2011.

M. Dyson, F. Sepulveda, J. Q. Gan, and S. J. Roberts, Sequential classification of mental tasks vs. idle state for EEG based BCIs, 4th International IEEE/EMBS Conference on Neural Engineering, pp.351-354, 2009.

J. Dem?ar, Statistical Comparisons of Classifiers over Multiple Data Sets, Journal of Machine Learning Research, vol.7, pp.1-30, 2006.

B. Calvo and G. Santafé, Scmamp: Statistical Comparison of Multiple Algorithms in Multiple Problems, The R Journal, vol.8, issue.1, 2016.

W. Klimesch, EEG alpha and theta oscillations reflect cognitive and memory performance: a review and analysis, Brain Res. Rev, vol.29, pp.169-195, 1999.

O. Jensen, J. Gelfand, K. Kounious, and J. E. Lisman, Oscillations in the alpha band (9-12 Hz) increase with memory load during retention in a short-term memory task, Cereb. Cortex, vol.12, pp.877-882, 2002.

W. Klimesch, P. Sauseng, and S. Hanslmayr, EEG alpha oscillations: The inhibition-timing hypothesis, Brain Research Reviews, vol.53, pp.63-88, 2007.

B. Allison and C. Neuper, Could Anyone Use a BCI, 2010.

C. Jeunet, B. N'kaoua, S. Subramanian, M. Hachet, and F. Lotte, Predicting Mental Imagery-Based BCI Performance from Personality, Cognitive Profile and Neurophysiological Patterns, PLOS ONE, vol.10, issue.12, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01177685

G. Pfurtscheller and C. Neuper, Motor imagery and direct brain-computer communication, Proceedings of the IEEE, vol.89, pp.1123-1134, 2002.

T. J. Lloyd-jones and G. W. Humphreys, Perceptual differentiation as a source of category effects in object processing: evidence from naming and object decision, Mem Cognit, vol.25, pp.18-35, 1997.

F. Galán, A brain-actuated wheelchair: Asynchronous and non-invasive Brain-computer interfaces for continuous control of robots, Clinical Neurophysiology, vol.119, issue.9, pp.2159-2169, 2008.

D. S. Tan and A. Nijholt, Brain-Computer Interaction: Applying our Minds toHuman-Computer Interaction, 2010.

J. Fruitet, A. Carpentier, R. Munos, and M. Clerc, Bandit Algorithms boostBrain Computer Interfaces for motor-task selection of a brain-controlled button, Advances in Neural Information Processing Systems, vol.25, pp.458-466, 2012.

E. Iáñez, A. Úbeda, E. Hortal, and J. M. Azorín, Mental tasks selection method for a SVM-based BCI system, IEEE International Systems Conference (SysCon), pp.767-771, 2013.

Y. Renard, An Open-Source Software Platform to Design, Test and Use Brain-Computer Interfaces in Real and Virtual Environments, Presence: teleoperators and virtual environments, vol.19, issue.1, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00477153

A. Delorme, New Tools for Advanced EEG Processing. Computational Intelligence and Neuroscience, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00621251

A. J. Bell and T. J. Sejnowski, An information maximisation approach to blind separation and blind deconvolution, Neural Computation, vol.7, issue.6, pp.1129-1159, 1995.

R. Tomioka, G. Dornhege, K. Aihara, and K. Mueller, An iterative algorithm for spatio-temporal filter optimization, Proceedings of the 3rd International Brain-Computer Interface Workshop and Training Course, 2006.

B. Blankertz, S. Lemm, M. S. Treder, S. Haufe, and K. Mueller, Single-trial analysis and classification of ERP components-a tutorial, Neuroimage, 2010.

G. Müller-putz, R. Scherer, C. Brunner, R. Leeb, and G. Pfurtscheller, Better than Random? A closer look on BCI results, International Journal of Bioelektromagnetism, vol.10, pp.52-55, 2008.