Mathias Quoy


Ontology type: schema:Person     


Person Info

NAME

Mathias

SURNAME

Quoy

Publications in SciGraph latest 50 shown

  • 2017 INFERNO: A Novel Architecture for Generating Long Neuronal Sequences with Spikes in ADVANCES IN NEURAL NETWORKS - ISNN 2017
  • 2016 From Cognitive to Habit Behavior During Navigation, Through Cortical-Basal Ganglia Loops in ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING – ICANN 2016
  • 2016 Motion of Oriented Magnitudes Patterns for Human Action Recognition in ADVANCES IN VISUAL COMPUTING
  • 2015-12 Cooperation/supervision of a habit by a cognitive strategy in a goal-directed navigational paradigm in BMC NEUROSCIENCE
  • 2015 Representation-Implementation Trade-Off in Cortico-Limbic Ganglio-Basal Loops in ADVANCES IN COGNITIVE NEURODYNAMICS (IV)
  • 2015 Development of the Multimodal Integration in the Superior Colliculus and Its Link to Neonates Facial Preference in ADVANCES IN COGNITIVE NEURODYNAMICS (IV)
  • 2014 Robustness Study of a Multimodal Compass Inspired from HD-Cells and Dynamic Neural Fields in FROM ANIMALS TO ANIMATS 13
  • 2013-07 Goal conditioning throw mutimodal categorisation in a simulation of rat navigation in BMC NEUROSCIENCE
  • 2010-07 Space and time-related firing in a model of hippocampo-cortical interactions in BMC NEUROSCIENCE
  • 2010-03 Cognitive map plasticity and imitation strategies to improve individual and social behaviors of autonomous agents in PALADYN
  • 2010 Model of the Hippocampal Learning of Spatio-temporal Sequences in ARTIFICIAL NEURAL NETWORKS – ICANN 2010
  • 2010 Why and How Hippocampal Transition Cells Can Be Used in Reinforcement Learning in FROM ANIMALS TO ANIMATS 11
  • 2008 Interest of Spatial Context for a Place Cell Based Navigation Model in FROM ANIMALS TO ANIMATS 10
  • 2006 Navigation and Planning in an Unknown Environment Using Vision and a Cognitive Map in EUROPEAN ROBOTICS SYMPOSIUM 2006
  • 2006 Transition Cells for Navigation and Planning in an Unknown Environment in FROM ANIMALS TO ANIMATS 9
  • 2005 Transition Cells and Neural Fields for Navigation and Planning in MECHANISMS, SYMBOLS, AND MODELS UNDERLYING COGNITION
  • 2003 Robots as Models of the Brain: What Can We Learn from Modelling Rat Navigation and Infant Imitation Games? in ARTIFICIAL INTELLIGENCE IN MEDICINE
  • 2002-10 Resonant spatiotemporal learning in large random recurrent networks in BIOLOGICAL CYBERNETICS
  • 2002-09 Resonant spatiotemporal learning in large random recurrent networks in BIOLOGICAL CYBERNETICS
  • 2001-06-12 Investigating Active Pattern Recognition in an Imitative Game in BIO-INSPIRED APPLICATIONS OF CONNECTIONISM
  • 2000-08-18 Parallelization of Neural Networks Using PVM in RECENT ADVANCES IN PARALLEL VIRTUAL MACHINE AND MESSAGE PASSING INTERFACE
  • 2000 A Planning Map for Mobile Robots: Speed Control and Paths Finding in a Changing Environment in ADVANCES IN ROBOT LEARNING
  • 1999 A Neural Model for the Visual Navigation and Planning of a Mobile Robot in ADVANCES IN ARTIFICIAL LIFE
  • 1997 Spontaneous Dynamics and Associative Learning in an Assymetric Recurrent Random Neural Network in MATHEMATICS OF NEURAL NETWORKS
  • 1995-06 Mean-field equations, bifurcation map and chaos in discrete time, continuous state, random neural networks in ACTA BIOTHEORETICA
  • 1994-09 On bifurcations and chaos in random neural networks in ACTA BIOTHEORETICA
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