Optical neural networks are emerging as a promising type of machine learning hardware capable of energy-efficient, parallel computation. Today's optical neural networks are mainly developed to perform optical inference after in silico training on digital simulators. However, various physical imperfections that cannot be accurately modelled may lead to the notorious reality gap between the digital simulator and the physical system. To address this challenge, we demonstrate hybrid training of optical neural networks where the weight matrix is trained with neuron activation functions computed optically via forward propagation through the network. We examine the efficacy of hybrid training with three different networks: an optical linear classi...
An optical computer which performs the classification of an input object pattern into one of two lea...
Deep learning has exhibited remarkable performance on various computer vision tasks. However, these ...
We propose a digital incoherent optical neural network architecture using the passive data routing a...
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
Click on the DOI link below to access the article (may not be free)The optical bench training of an ...
Speed, generalizability, and robustness are fundamental issues for building lightweight computationa...
HIS REPORT DESCRIBES the construction of a dynamic optical hybrid system for imple-menting multi-lay...
Abstract--This paper deals with the design, analysis, and simulation of a prototype Optical Fixed-We...
[ES] Estudio de las técnicas de multiplicación de matrices fotónicas, el rendimiento y las arquitect...
Integrated photonic neural networks provide a promising platform for energy-efficient, high-throughp...
In this Letter, we demonstrate how harmonic oscillator equations can be integrated in a neural netwo...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
We show that the Kak neural network is suitable for optical implementation using a bipolar matrix ve...
In contrast to software simulations of neural networks, hardware implementations have often limited ...
All-optical multilayer perceptrons differ in various ways from the ideal neural network model. Examp...
An optical computer which performs the classification of an input object pattern into one of two lea...
Deep learning has exhibited remarkable performance on various computer vision tasks. However, these ...
We propose a digital incoherent optical neural network architecture using the passive data routing a...
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
Click on the DOI link below to access the article (may not be free)The optical bench training of an ...
Speed, generalizability, and robustness are fundamental issues for building lightweight computationa...
HIS REPORT DESCRIBES the construction of a dynamic optical hybrid system for imple-menting multi-lay...
Abstract--This paper deals with the design, analysis, and simulation of a prototype Optical Fixed-We...
[ES] Estudio de las técnicas de multiplicación de matrices fotónicas, el rendimiento y las arquitect...
Integrated photonic neural networks provide a promising platform for energy-efficient, high-throughp...
In this Letter, we demonstrate how harmonic oscillator equations can be integrated in a neural netwo...
This feature of Applied Optics is devoted to papers on the optical implementation of neural-network ...
We show that the Kak neural network is suitable for optical implementation using a bipolar matrix ve...
In contrast to software simulations of neural networks, hardware implementations have often limited ...
All-optical multilayer perceptrons differ in various ways from the ideal neural network model. Examp...
An optical computer which performs the classification of an input object pattern into one of two lea...
Deep learning has exhibited remarkable performance on various computer vision tasks. However, these ...
We propose a digital incoherent optical neural network architecture using the passive data routing a...