Abstract--This paper deals with the design, analysis, and simulation of a prototype Optical Fixed-Weight Learning Neural Network. This type of network could have learning rates five orders of magnitude faster than networks based on Von-Neumann platforms. This network has an embedded learning algorithm and dynamically learns new mappings by changing recurrent neural signal strengths. This will greatly speed up optical neural network learning since the medium containing the synaptic weights does not change during learning. Software simulations suggest that this design is sound. The physical implementation and evaluation of the prototype will be reported elsewhere. I
The most promising approaches for optical neural networks are based on intensity encoding. However, ...
Neural networks are computing systems modelled after the biological neural network of animal brain a...
Many factors influence vision neural network information processing process, for example: Signal ini...
Fixed-weight learning embeds a learning algorithm into the neural network topology, so its learning ...
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
An optical computer which performs the classification of an input object pattern into one of two lea...
Click on the DOI link below to access the article (may not be free)The optical bench training of an ...
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
HIS REPORT DESCRIBES the construction of a dynamic optical hybrid system for imple-menting multi-lay...
We describe an optoelectronic neural network implementation with electronic neurons and synapses and...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Implementation of an opto-electronic Hopfield style associative memory neural network is discussed w...
Optical-processor architectures for various forms of the alternating-projection neural network are c...
In our laser neural network (LNN) all-optical threshold action is obtained by application of control...
All-optical multilayer perceptrons differ in various ways from the ideal neural network model. Examp...
The most promising approaches for optical neural networks are based on intensity encoding. However, ...
Neural networks are computing systems modelled after the biological neural network of animal brain a...
Many factors influence vision neural network information processing process, for example: Signal ini...
Fixed-weight learning embeds a learning algorithm into the neural network topology, so its learning ...
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
An optical computer which performs the classification of an input object pattern into one of two lea...
Click on the DOI link below to access the article (may not be free)The optical bench training of an ...
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
HIS REPORT DESCRIBES the construction of a dynamic optical hybrid system for imple-menting multi-lay...
We describe an optoelectronic neural network implementation with electronic neurons and synapses and...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Implementation of an opto-electronic Hopfield style associative memory neural network is discussed w...
Optical-processor architectures for various forms of the alternating-projection neural network are c...
In our laser neural network (LNN) all-optical threshold action is obtained by application of control...
All-optical multilayer perceptrons differ in various ways from the ideal neural network model. Examp...
The most promising approaches for optical neural networks are based on intensity encoding. However, ...
Neural networks are computing systems modelled after the biological neural network of animal brain a...
Many factors influence vision neural network information processing process, for example: Signal ini...