Optical implementation of content addressable associative memory based on the Hopfield model for neural networks and on the addition of nonlinear iterative feedback to a vector-matrix multiplier is described. Numerical and experimental results presented show that the approach is capable of introducing accuracy and robustness to optical processing while maintaining the traditional advantages of optics, namely, parallelism and massive interconnection capability. Moreover a potentially useful link between neural processing and optics that can be of interest in pattern recognition and machine vision is established
A numerical study of two classes of neural network models is presented. The performance of Ising ...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
International audienceA modified calculation of the synaptic matrix for Hopfield-like networks is pr...
The remarkable collective computational properties of the Hopfield model for neural networks [Proc. ...
We describe two experiments in optical neural computing. In the first a closed optical feedback loop...
The performance of an associate memory network depends significantly on the representation of the da...
Implementation of an opto-electronic Hopfield style associative memory neural network is discussed w...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
In recent years there has been a great interest in neural networks, since neural networks are capabl...
A perfectly convergent unipolar neural associative-memory system based on nonlinear dynamical termin...
Several experimental demonstrations of neural networks using coherent optics are demonstrated. An as...
We show that the Kak neural network is suitable for optical implementation using a bipolar matrix ve...
A software to appreciate the performance of the Hopfield’s Neural Network (Associative Content-Addre...
A software to appreciate the performance of the Hopfield’s Neural Network (Associative Content-Addre...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
A numerical study of two classes of neural network models is presented. The performance of Ising ...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
International audienceA modified calculation of the synaptic matrix for Hopfield-like networks is pr...
The remarkable collective computational properties of the Hopfield model for neural networks [Proc. ...
We describe two experiments in optical neural computing. In the first a closed optical feedback loop...
The performance of an associate memory network depends significantly on the representation of the da...
Implementation of an opto-electronic Hopfield style associative memory neural network is discussed w...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
In recent years there has been a great interest in neural networks, since neural networks are capabl...
A perfectly convergent unipolar neural associative-memory system based on nonlinear dynamical termin...
Several experimental demonstrations of neural networks using coherent optics are demonstrated. An as...
We show that the Kak neural network is suitable for optical implementation using a bipolar matrix ve...
A software to appreciate the performance of the Hopfield’s Neural Network (Associative Content-Addre...
A software to appreciate the performance of the Hopfield’s Neural Network (Associative Content-Addre...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
A numerical study of two classes of neural network models is presented. The performance of Ising ...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
International audienceA modified calculation of the synaptic matrix for Hopfield-like networks is pr...