A new approach to learning in a multilayer optical neural network based on holographically interconnected nonlinear devices is presented. The proposed network can learn the interconnections that form a distributed representation of a desired pattern transformation operation. The interconnections are formed in an adaptive and self-aligning fashioias volume holographic gratings in photorefractive crystals. Parallel arrays of globally space-integrated inner products diffracted by the interconnecting hologram illuminate arrays of nonlinear Fabry-Perot etalons for fast thresholding of the transformed patterns. A phase conjugated reference wave interferes with a backward propagating error signal to form holographic interference patterns which are...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
An optical network is described that is capable of recognizing at standard video rates the identity ...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
The capabilities of photorefractive crystals as media for holographic interconnections in neural net...
In a holographic optical learning network, the decay of multiply exposed holographic interconnection...
In order to implement fully adaptive optical multilayer neural networks, a number of issues involvin...
We describe two experiments in optical neural computing. In the first a closed optical feedback loop...
Optical implementation of a backpropagating neuron by means of a nonlinear Fabry-Perot etalon requir...
The dense interconnections that characterize neural networks are most readily implemented using opti...
We present a novel, versatile optoelectronic neural network architecture for implementing supervised...
We describe a two-layer neural network using holographic optical disks as the interconnection weight...
An optical computer which performs the classification of an input object pattern into one of two lea...
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...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
An optical network is described that is capable of recognizing at standard video rates the identity ...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
The capabilities of photorefractive crystals as media for holographic interconnections in neural net...
In a holographic optical learning network, the decay of multiply exposed holographic interconnection...
In order to implement fully adaptive optical multilayer neural networks, a number of issues involvin...
We describe two experiments in optical neural computing. In the first a closed optical feedback loop...
Optical implementation of a backpropagating neuron by means of a nonlinear Fabry-Perot etalon requir...
The dense interconnections that characterize neural networks are most readily implemented using opti...
We present a novel, versatile optoelectronic neural network architecture for implementing supervised...
We describe a two-layer neural network using holographic optical disks as the interconnection weight...
An optical computer which performs the classification of an input object pattern into one of two lea...
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...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
An optical network is described that is capable of recognizing at standard video rates the identity ...