This paper presents the self-organized neuromorphic architecture named SOMA. The objective is to study neural-based self-organization in computing systems and to prove the feasibility of a self-organizing hardware structure. Considering that these properties emerge from large scale and fully connected neural maps, we will focus on the definition of a self-organizing hardware architecture based on digital spiking neurons that offer hardware efficiency. From a biological point of view, this corresponds to a combination of the so-called synaptic and structural plasticities. We intend to define computational models able to simultaneously self-organize at both computation and communication levels, and we want these models to be hardware-complian...
Nowadays, one of the main challenges in computer architectures is scalability; indeed, novel process...
Several analog and digital brain-inspired electronic systems have been recently proposed as dedicate...
Indiveri G, Chicca E, Douglas RJ. Artificial cognitive systems: From VLSI networks of spiking neuron...
This paper presents the self-organized neuromorphic architecture named SOMA. The objective is to stu...
International audienceFace to the limitations of the classical computationmodel, neuromorphic system...
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neu...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
International audienceNeuro-biological systems have often been a source of inspiration for computati...
International audienceSelf-organizing maps (SOM) are a well-known and biologically plausible model o...
The Self-Organizing Map (SOM) is a recurrent neural network topology that realizes competitive learn...
We define a hardware controller in which a grid of processing elements (PEs) will support a set of n...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...
Brain-inspired neuromorphic computing has attracted much attention for its advanced computing concep...
Nowadays, one of the main challenges in computer architectures is scalability; indeed, novel process...
Several analog and digital brain-inspired electronic systems have been recently proposed as dedicate...
Indiveri G, Chicca E, Douglas RJ. Artificial cognitive systems: From VLSI networks of spiking neuron...
This paper presents the self-organized neuromorphic architecture named SOMA. The objective is to stu...
International audienceFace to the limitations of the classical computationmodel, neuromorphic system...
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neu...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
International audienceNeuro-biological systems have often been a source of inspiration for computati...
International audienceSelf-organizing maps (SOM) are a well-known and biologically plausible model o...
The Self-Organizing Map (SOM) is a recurrent neural network topology that realizes competitive learn...
We define a hardware controller in which a grid of processing elements (PEs) will support a set of n...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...
Brain-inspired neuromorphic computing has attracted much attention for its advanced computing concep...
Nowadays, one of the main challenges in computer architectures is scalability; indeed, novel process...
Several analog and digital brain-inspired electronic systems have been recently proposed as dedicate...
Indiveri G, Chicca E, Douglas RJ. Artificial cognitive systems: From VLSI networks of spiking neuron...