From 101f1fa1e7326ac0ef7701c56465c51bc0bbefbb Mon Sep 17 00:00:00 2001 From: Laurent Perrinet Date: Thu, 22 Feb 2024 14:53:01 +0100 Subject: [PATCH] test --- content/authors/laurent-u-perrinet/_index.md | 2 +- 1 file changed, 1 insertion(+), 1 deletion(-) diff --git a/content/authors/laurent-u-perrinet/_index.md b/content/authors/laurent-u-perrinet/_index.md index 0310b9b..5e24b0a 100644 --- a/content/authors/laurent-u-perrinet/_index.md +++ b/content/authors/laurent-u-perrinet/_index.md @@ -49,4 +49,4 @@ user_groups: - Animators --- -Laurent Perrinet is a computational neuroscientist specialized in large scale spiking neural network models of low-level vision, perception and action, currently at the "[Institut de Neurosciences de la Timone](https://www.int.univ-amu.fr)" (France), a joint research unit (CNRS / Aix-Marseille Université, UMR7289). He co-authored more than 60 articles in computational neuroscience and computer vision. He graduated from the aeronautics engineering school SUPAERO, in Toulouse (France) with a signal processing and applied mathematics degree. He received a PhD in Cognitive Science in 2003 on the mathematical analysis of temporal spike coding of images by using a multi-scale and adaptive representation of natural scenes. His research program is focusing in bridging the complex dynamics of realistic, large-scale models of spiking neurons with functional models of low-level vision. In particular, as part of the FACETS and BrainScaleS consortia, he has developed experimental protocols in collaboration with neurophysiologists to characterize the response of population of neurons. Recently, he extended models of visual processing in the framework of predictive processing in collaboration with the team of Karl Friston at the University College of London. This method aims at characterizing the processing of dynamical flow of information as an active inference process. His current challenge within the NeOpTo team is to translate, or *compile* in computer terminology, this mathematical formalism with the event-based nature of neural information with the aim of pushing forward the frontiers of Artificial Intelligence systems. +Laurent Perrinet is a computational neuroscientist specialized in large scale neural network models of low-level vision, perception and action, currently at the "[Institut de Neurosciences de la Timone](https://www.int.univ-amu.fr)" (France), a joint research unit (CNRS / Aix-Marseille Université, UMR7289). He co-authored more than 60 articles in computational neuroscience and computer vision. He graduated from the aeronautics engineering school SUPAERO, in Toulouse (France) with a signal processing and applied mathematics degree. He received a PhD in Cognitive Science in 2003 on the mathematical analysis of temporal spike coding of images by using a multi-scale and adaptive representation of natural scenes. His research program is focusing in bridging the complex dynamics of realistic, large-scale models of spiking neurons with functional models of low-level vision. In particular, as part of the FACETS and BrainScaleS consortia, he has developed experimental protocols in collaboration with neurophysiologists to characterize the response of population of neurons. Recently, he extended models of visual processing in the framework of predictive processing in collaboration with the team of Karl Friston at the University College of London. This method aims at characterizing the processing of dynamical flow of information as an active inference process. His current challenge within the NeOpTo team is to translate, or *compile* in computer terminology, this mathematical formalism with the event-based nature of neural information with the aim of pushing forward the frontiers of Artificial Intelligence systems.