M. Andujar and J. E. Gilbert, Let's learn!: enhancing user's engagement levels through passive brain-computer interfaces, CHI'13 Extended Abstracts on Human Factors in Computing Systems, pp.703-708

B. Blankertz, S. Lemm, M. Treder, S. Haufe, and K. Mller, Singletrial analysis and classification of erp components a tutorial, NeuroImage, vol.56, issue.2, pp.814-825, 2011.

L. Bonnet, F. Lotte, and A. Lécuyer, Two brains, one game: design and evaluation of a multiuser bci video game based on motor imagery, IEEE Transactions on Computational Intelligence and AI in games, vol.5, issue.2, pp.185-198, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00784886

R. Chavarriaga, A. Sobolewski, and J. D. Millán, Errare machinale est: the use of error-related potentials in brain-machine interfaces, Frontiers in neuroscience, vol.8, p.208, 2014.

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.

A. Delorme, S. Makeig, and T. Sejnowski, Automatic artifact rejection for eeg data using high-order statistics and independant component analysis, vol.01, 2001.

M. Falkenstein, J. Hohnsbein, J. Hoormann, and L. Blanke, Effects of crossmodal divided attention on late erp components. ii. error processing in choice reaction tasks, Electroencephalography and clinical neurophysiology, vol.78, issue.6, pp.447-455, 1991.

M. Falkenstein, J. Hoormann, S. Christ, and J. Hohnsbein, Erp components on reaction errors and their functional significance: a tutorial, Biological psychology, vol.51, issue.2-3, pp.87-107, 2000.

P. W. Ferrez and J. D. Millán, Error-related eeg potentials generated during simulated brain-computer interaction, IEEE transactions on biomedical engineering, vol.55, issue.3, pp.923-929, 2008.

P. W. Ferrez and J. D. Millán, Simultaneous real-time detection of motor imagery and error-related potentials for improved bci accuracy, Proceedings of the 4th Intl. Brain-Computer Interface Workshop and Training Course (Graz), 2008.

M. J. Frank, B. S. Woroch, and T. Curran, Error-related negativity predicts reinforcement learning and conflict biases, Neuron, vol.47, issue.4, pp.495-501, 2005.

W. J. Gehring, B. Goss, M. G. Coles, D. E. Meyer, and E. Donchin, A neural system for error detection and compensation, Psychological science, vol.4, issue.6, pp.385-390, 1993.

L. Gehrke, S. Akman, P. Lopes, A. Chen, A. K. Singh et al., Detecting visuo-haptic mismatches in virtual reality using the prediction error negativity of event-related brain potentials, Proceedings of the 2019 CHI Conference on Human Factors in Computing Systems, CHI '19, vol.427, pp.1-427, 2019.

G. Hajcak, C. B. Holroyd, J. S. Moser, and R. F. Simons, Psychophysiology, vol.42, issue.2, pp.161-170, 2005.

C. Kothe, Lab streaming layer (lsl), 2014.

A. Kreilinger, C. Neuper, and G. Mller-putz, Error potential detection during continuous movement of an artificial arm controlled by braincomputer interface, Medical & biological engineering & computing, vol.50, pp.223-253, 2012.

J. J. Laviola, E. Kruijff, R. P. Mcmahan, D. Bowman, and I. P. Poupyrev, 3D user interfaces: theory and practice, 2017.

A. Llera, V. Gómez, and H. J. Kappen, Adaptive classification on braincomputer interfaces using reinforcement signals, Neural Computation, vol.24, issue.11, pp.2900-2923, 2012.

A. Llera, M. A. Van-gerven, V. Gómez, O. Jensen, and H. J. Kappen, On the use of interaction error potentials for adaptive brain computer interfaces, Neural Networks, vol.24, issue.10, pp.1120-1127, 2011.

C. Lopes-dias, A. I. Sburlea, and G. R. Mller-putz, Masked and unmasked error-related potentials during continuous control and feedback, Journal of Neural Engineering, vol.15, issue.3, p.36031, 2018.

C. Lopes-dias, A. I. Sburlea, and G. R. Müller-putz, Online asynchronous decoding of error-related potentials during the continuous control of a robot, Scientific Reports, vol.9, issue.1, p.17596, 2019.

F. Lotte, J. Faller, C. Guger, Y. Renard, G. Pfurtscheller et al., Combining BCI with Virtual Reality: Towards New Applications and Improved BCI, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00735932

G. R. Müller-putz, R. Scherer, C. Brunner, R. Leeb, and G. Pfurtscheller, Better than random: a closer look on bci results, International Journal of Bioelectromagnetism, 2008.

A. Navarro-cebrian, R. T. Knight, and A. S. Kayser, Error-monitoring and post-error compensations: dissociation between perceptual failures and motor errors with and without awareness, Journal of Neuroscience, vol.33, issue.30, pp.12375-12383, 2013.

J. Omedes, I. Iturrate, J. Minguez, and L. Montesano, Analysis and asynchronous detection of gradually unfolding errors during monitoring tasks, Journal of Neural Engineering, vol.12, issue.5, p.56001, 2015.

J. Omedes, I. Iturrate, and L. Montesano, Brain connectivity in continuous error tasks, 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, pp.3997-4000, 2014.

G. Padrao, M. Gonzalez-franco, M. V. Sanchez-vives, M. Slater, and A. Rodriguez-fornells, Violating body movement semantics: neural signatures of self-generated and external-generated errors, Neuroimage, vol.124, pp.147-156, 2016.

R. Pezzetta, V. Nicolardi, E. Tidoni, and S. M. Aglioti, Error, rather than its probability, elicits specific electrocortical signatures: a combined eeg-immersive virtual reality study of action observation, Journal of neurophysiology, 2018.

G. Pfurtscheller and C. Neuper, Motor imagery and direct braincomputer communication, Proceedings of the IEEE, vol.89, pp.1123-1134, 2001.

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, 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

A. F. Salazar-gomez, J. Delpreto, S. Gil, F. H. Guenther, and D. Rus, Correcting robot mistakes in real time using eeg signals, 2017 IEEE International Conference on Robotics and Automation (ICRA), pp.6570-6577, 2017.

G. Schalk, J. R. Wolpaw, D. J. Mcfarland, and G. Pfurtscheller, Eegbased communication: presence of an error potential, Clinical Neurophysiology, vol.111, issue.12, pp.2138-2144, 2000.

M. Slater and A. Steed, A virtual presence counter, Teleoperators & Virtual Environments, vol.9, pp.413-434, 2000.

M. Spler and C. Niethammer, Error-related potentials during continuous feedback: using eeg to detect errors of different type and severity, Frontiers in Human Neuroscience, vol.9, p.155, 2015.

J. R. Wessel, Error awareness and the error-related negativity: evaluating the first decade of evidence, Frontiers in Human Neuroscience, vol.6, p.88, 2012.

B. Yazmir and M. Reiner, I act, therefore i err: Eeg correlates of success and failure in a virtual throwing game, International Journal of Psychophysiology, vol.122, pp.32-41, 2017.

B. Yazmir, M. Reiner, H. Pratt, and M. Zacksenhouse, Brain responses to errors during 3d motion in a hapto-visual vr, International Conference on Human Haptic Sensing and Touch Enabled Computer Applications, pp.120-130, 2016.

T. O. Zander, L. R. Krol, N. P. Birbaumer, and K. Gramann, Neuroadaptive technology enables implicit cursor control based on medial prefrontal cortex activity, Proceedings of the National Academy of Sciences, 2016.

H. Zhang, R. Chavarriaga, Z. Khaliliardali, L. Gheorghe, I. Iturrate et al., EEG-based decoding of error-related brain activity in a real-world driving task, Journal of Neural Engineering, vol.12, issue.6, p.66028, 2015.