We present a novel, versatile optoelectronic neural network architecture for implementing supervised learning algorithms in photorefractive materials. The system is based on spatial multiplexing rather than the more commonly used angular multiplexing of the interconnect gratings. This simple, single-crystal architecture implements a variety of multilayer supervised learning algorithms including mean field theory, back-propagation, and Marr-Albus-Kanerva style algorithms. Extensive simulations show how beam depletion, rescattering, absorption, and decay effects of the crystal are compensated for by suitably modified supervised learning algorithms
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
A partitionable adaptive multilayer diffractive optical neural network is constructed to address set...
We report an approach assisted by deep learning to design spectrally sensitive multiband absorbers t...
We present a novel, versatile optoelectronic neural network architecture for implementing supervised...
The capabilities of photorefractive crystals as media for holographic interconnections in neural net...
An optical computer which performs the classification of an input object pattern into one of two lea...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
A new approach to learning in a multilayer optical neural network based on holographically interconn...
This paper describes a new optical processing devices that can handle large patterns and can accommo...
We describe the combination of neural network training and volume holographic storage technologies u...
Photorefractive materials exhibit an interesting plasticity under the influence of an optical field....
[eng] Photonic Neural Network implementations have been gaining considerable attention as a potentia...
The dense interconnections that characterize neural networks are most readily implemented using opti...
In this paper, we establish a new scheme for identification and classification of high intensity eve...
We modeled Multilayer Perceptron (MLP) Artificial Neural Network for predicting band diagrams (BD) o...
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
A partitionable adaptive multilayer diffractive optical neural network is constructed to address set...
We report an approach assisted by deep learning to design spectrally sensitive multiband absorbers t...
We present a novel, versatile optoelectronic neural network architecture for implementing supervised...
The capabilities of photorefractive crystals as media for holographic interconnections in neural net...
An optical computer which performs the classification of an input object pattern into one of two lea...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
A new approach to learning in a multilayer optical neural network based on holographically interconn...
This paper describes a new optical processing devices that can handle large patterns and can accommo...
We describe the combination of neural network training and volume holographic storage technologies u...
Photorefractive materials exhibit an interesting plasticity under the influence of an optical field....
[eng] Photonic Neural Network implementations have been gaining considerable attention as a potentia...
The dense interconnections that characterize neural networks are most readily implemented using opti...
In this paper, we establish a new scheme for identification and classification of high intensity eve...
We modeled Multilayer Perceptron (MLP) Artificial Neural Network for predicting band diagrams (BD) o...
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
A partitionable adaptive multilayer diffractive optical neural network is constructed to address set...
We report an approach assisted by deep learning to design spectrally sensitive multiband absorbers t...