Emmanuel Guigon
Affiliations: | CNRS / UPMC - ISIR |
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Sign in to add traineePierre Baraduc | grad student | ||
Lionel Rigoux | grad student | 2008-2011 | Université Pierre et Marie Curie |
Ignasi Cos | research scientist | 2013-2014 | CNRS / UPMC - ISIR |
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Publications
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Moullet E, Roby-Brami A, Guigon E. (2022) What is the nature of motor adaptation to dynamic perturbations? Plos Computational Biology. 18: e1010470 |
Guigon E. (2021) A computational theory for the production of limb movements. Psychological Review |
Boyer EO, Bevilacqua F, Guigon E, et al. (2020) Modulation of ellipses drawing by sonification. Experimental Brain Research |
Guigon E, Chafik O, Jarrassé N, et al. (2019) Experimental and theoretical study of velocity fluctuations during slow movements in humans. Journal of Neurophysiology |
Xavier J, Guedjou H, Anzalone SM, et al. (2018) Toward a motor signature in autism: Studies from human-machine interaction. L'Encephale |
Proietti T, Guigon E, Roby-Brami A, et al. (2017) Modifying upper-limb inter-joint coordination in healthy subjects by training with a robotic exoskeleton. Journal of Neuroengineering and Rehabilitation. 14: 55 |
Cos I, Girard B, Guigon E. (2015) Balancing out dwelling and moving: optimal sensorimotor synchronization. Journal of Neurophysiology. 114: 146-58 |
Taïx M, Tran MT, Souères P, et al. (2013) Generating human-like reaching movements with a humanoid robot: A computational approach Journal of Computational Science. 4: 269-284 |
Rigoux L, Guigon E. (2012) A model of reward- and effort-based optimal decision making and motor control. Plos Computational Biology. 8: e1002716 |
Reinkensmeyer DJ, Guigon E, Maier MA. (2012) A computational model of use-dependent motor recovery following a stroke: optimizing corticospinal activations via reinforcement learning can explain residual capacity and other strength recovery dynamics. Neural Networks : the Official Journal of the International Neural Network Society. 29: 60-9 |