In sensory systems, different computational rules are postulated to be implemented by different neuronal subpopulations, each one being characterised by a particular tuning function. For instance, in primate cortical area MT, different classes of direction-selective cells have been identified and related to either motion integration, segmentation or transparency. Still, how such different tuning properties are constructed is unclear. The dominant theoretical viewpoint postulates that differential weighting of MT inputs along the linear-nonlinear feedforward cascade is sufficient to build these different cell classes but it does not account for their complex temporal dynamics and their versatility when facing different input statistics. Here...
Le regroupement des neurones de propriétés similaires est à l’origine de modules permettant d’optimi...
An experimental study has been performed in a Mach 2.3 shock wave/ detached turbulent boundary layer...
L’apprentissage machine est un vaste domaine où l’on cherche à apprendre les paramètres de modèles ...
Cette thèse consiste à explorer une nouvelle approche pour la simulation d'objets flexibles par la m...
Channels are the main sedimentary structures for sediment transportation and deposition from the con...
The complexity of virtual worlds is increasing and conventional modeling techniques are struggling t...
International audienceThis paper challenges and significantly extends the seminal work in \cite{erme...
Understanding the behavior of the retino-thalamo-cortico-collicular (i.e. early) visual system in a ...
The brain, beyond its primary sensori-motor and regulation functions, is an outstanding adaptive sys...
The thesis work presented in this manuscript focuses on the simulation of an handling motion, more s...
The perspective of nanometric technologies foreshadows the advent of processors consisting of hundre...
The goal of machine learning is to learn a model from some data that will make accurate predictions ...
Non-invasive Brain Computer Interfaces (BCIs) allow a user to control a machine using only their bra...
Distributed systems are systems composed of multiple communicant processes cooperating to solve a co...
Nowadays, industrial processes must be efficient, particularly at the production level and/or energy...
Le regroupement des neurones de propriétés similaires est à l’origine de modules permettant d’optimi...
An experimental study has been performed in a Mach 2.3 shock wave/ detached turbulent boundary layer...
L’apprentissage machine est un vaste domaine où l’on cherche à apprendre les paramètres de modèles ...
Cette thèse consiste à explorer une nouvelle approche pour la simulation d'objets flexibles par la m...
Channels are the main sedimentary structures for sediment transportation and deposition from the con...
The complexity of virtual worlds is increasing and conventional modeling techniques are struggling t...
International audienceThis paper challenges and significantly extends the seminal work in \cite{erme...
Understanding the behavior of the retino-thalamo-cortico-collicular (i.e. early) visual system in a ...
The brain, beyond its primary sensori-motor and regulation functions, is an outstanding adaptive sys...
The thesis work presented in this manuscript focuses on the simulation of an handling motion, more s...
The perspective of nanometric technologies foreshadows the advent of processors consisting of hundre...
The goal of machine learning is to learn a model from some data that will make accurate predictions ...
Non-invasive Brain Computer Interfaces (BCIs) allow a user to control a machine using only their bra...
Distributed systems are systems composed of multiple communicant processes cooperating to solve a co...
Nowadays, industrial processes must be efficient, particularly at the production level and/or energy...
Le regroupement des neurones de propriétés similaires est à l’origine de modules permettant d’optimi...
An experimental study has been performed in a Mach 2.3 shock wave/ detached turbulent boundary layer...
L’apprentissage machine est un vaste domaine où l’on cherche à apprendre les paramètres de modèles ...