Dynamic neural fields (DNFs) are dynamical systems models that approximate the activity of large, homogeneous, and recurrently connected neural networks based on a mean field approach. Within dynamic field theory, the DNFs have been used as building blocks in architectures to model sensorimotor embedding of cognitive processes. Typically, the parameters of a DNF in an architecture are manually tuned in order to achieve a specific dynamic behavior (e.g., decision making, selection, or working memory) for a given input pattern. This manual parameters search requires expert knowledge and time to find and verify a suited set of parameters. The DNF parametrization may be particular challenging if the input distribution is not known in advance, e...
Large and small cortexes of the brain are known to contain vast amounts of neurons that interact wit...
Abstract—Based on the concepts of dynamic field theory (DFT), we present an architecture that autono...
International audienceFor interactivity and cost-efficiency purposes, both biological and artificial...
Dynamic neural fields (DNFs) are dynamical systems models that approximate the activity of large, ho...
Dynamic neural fields (DNFs) are dynamical systems models that approximate the activity of large, ho...
Dynamic Field Theory (DFT) is an established framework for modeling embodied cognition. In DFT, elem...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
Embodied artificial cognitive systems, such as autonomous robots or intelligent observers, connect c...
International audienceDespite being successfully used in the design of various biologically-inspired...
International audienceBio-inspired neural computation attracts a lot of attention as a possible solu...
Intrinsic plasticity (IP) refers to a neuron’s ability to regulate its firing activity by adapting i...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
We propose a framework for localized learning with Reservoir Computing dynamical neural systems in p...
Experience constantly shapes neural circuits through a variety of plasticity mechanisms. While the f...
This chapter lays the conceptual and mathematical foundations of Dynamic Field Theory. We first talk...
Large and small cortexes of the brain are known to contain vast amounts of neurons that interact wit...
Abstract—Based on the concepts of dynamic field theory (DFT), we present an architecture that autono...
International audienceFor interactivity and cost-efficiency purposes, both biological and artificial...
Dynamic neural fields (DNFs) are dynamical systems models that approximate the activity of large, ho...
Dynamic neural fields (DNFs) are dynamical systems models that approximate the activity of large, ho...
Dynamic Field Theory (DFT) is an established framework for modeling embodied cognition. In DFT, elem...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
Embodied artificial cognitive systems, such as autonomous robots or intelligent observers, connect c...
International audienceDespite being successfully used in the design of various biologically-inspired...
International audienceBio-inspired neural computation attracts a lot of attention as a possible solu...
Intrinsic plasticity (IP) refers to a neuron’s ability to regulate its firing activity by adapting i...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
We propose a framework for localized learning with Reservoir Computing dynamical neural systems in p...
Experience constantly shapes neural circuits through a variety of plasticity mechanisms. While the f...
This chapter lays the conceptual and mathematical foundations of Dynamic Field Theory. We first talk...
Large and small cortexes of the brain are known to contain vast amounts of neurons that interact wit...
Abstract—Based on the concepts of dynamic field theory (DFT), we present an architecture that autono...
International audienceFor interactivity and cost-efficiency purposes, both biological and artificial...