A general scheme to realize a perceptron for hardware neural networks is presented, where multiple interconnections are achieved by a superposition of Schrödinger waves. Spatially patterned potentials process information by coupling different points of reciprocal space. The necessary potential shape is obtained from the Hebbian learning rule, either through exact calculation or construction from a superposition of known optical inputs. This allows implementation in a wide range of compact optical systems, including (1) any nonlinear optical system, (2) optical systems patterned by optical lithography, and (3) exciton-polariton systems with phonon or nuclear spin interactions.Published versio
none3Synchronization of neural activity in the gamma band is assumed to play a significant role not ...
A more plausible biological version of the traditional perceptron is presented here with a learning ...
Abstract: This report consists of three chapters that together give a view of how the very simple st...
In recent years there has been a great interest in neural networks, since neural networks are capabl...
Implementation of an opto-electronic Hopfield style associative memory neural network is discussed w...
Software implementations of brain-inspired computing underlie many important computational tasks, fr...
Macroscopic spin ensembles with brainlike features such as nonlinearity, stochasticity, self-oscilla...
We study artificial neural networks with nonlinear waves as a computing reservoir. We discuss univer...
Can computers be built to solve problems, such as recognizing patterns, that entail memorizing all p...
The dense interconnections that characterize neural networks are most readily implemented using opti...
International audienceWe show how a Hopfield network with modifiable recurrent connections undergoin...
A new approach to learning in a multilayer optical neural network based on holographically interconn...
This paper describes the digital hardware implementation of a neural model that includes both nonlin...
This paper presents a novel neuron learning machine (NLM) which can extract hierarchical features fr...
Exciton-polaritons are hybrid light-matter quasiparticles. Being such hybrid, they inherit the fast ...
none3Synchronization of neural activity in the gamma band is assumed to play a significant role not ...
A more plausible biological version of the traditional perceptron is presented here with a learning ...
Abstract: This report consists of three chapters that together give a view of how the very simple st...
In recent years there has been a great interest in neural networks, since neural networks are capabl...
Implementation of an opto-electronic Hopfield style associative memory neural network is discussed w...
Software implementations of brain-inspired computing underlie many important computational tasks, fr...
Macroscopic spin ensembles with brainlike features such as nonlinearity, stochasticity, self-oscilla...
We study artificial neural networks with nonlinear waves as a computing reservoir. We discuss univer...
Can computers be built to solve problems, such as recognizing patterns, that entail memorizing all p...
The dense interconnections that characterize neural networks are most readily implemented using opti...
International audienceWe show how a Hopfield network with modifiable recurrent connections undergoin...
A new approach to learning in a multilayer optical neural network based on holographically interconn...
This paper describes the digital hardware implementation of a neural model that includes both nonlin...
This paper presents a novel neuron learning machine (NLM) which can extract hierarchical features fr...
Exciton-polaritons are hybrid light-matter quasiparticles. Being such hybrid, they inherit the fast ...
none3Synchronization of neural activity in the gamma band is assumed to play a significant role not ...
A more plausible biological version of the traditional perceptron is presented here with a learning ...
Abstract: This report consists of three chapters that together give a view of how the very simple st...