International audienceWe propose a scalable photonic architecture for implementation of feedforward and recurrent neural networks to perform the classification of handwritten digits from the MNIST database. Our experiment exploits off-the-shelf optical and electronic components to currently achieve a network size of 16,384 nodes. Both network types are designed within the the reservoir computing paradigm with randomly weighted input and hidden layers. Using various feature extraction techniques (e.g. histograms of oriented gradients, zoning, Gabor filters) and a simple training procedure consisting of linear regression and winner-takes-all decision strategy, we demonstrate numerically and experimentally that a feedforward network allows for...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
We propose photonic reservoir computing as a new approach to optical signal processing and it can be...
Photonics-based neural networks promise to outperform electronic counterparts accelerating neural n...
International audienceWe propose a scalable photonic architecture for implementation of feedforward ...
International audienceWe propose a physical alternative of software based approaches for advanced cl...
Machine Learning (ML) approaches like Deep Neural Networks (DNNs) have emerged as a powerful tool fo...
International audienceThe recognition of human actions in video streams is a challenging task in com...
Driven by the remarkable breakthroughs during the past decade, photonics neural networks have experi...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
We review a novel paradigm that has emerged in analogue neuromorphic optical computing. The goal is ...
Despite ever increasing computational power, recognition and classification problems remain challeng...
Photonic computing has attracted much attention due to its great potential to accelerate artificial ...
[eng] Photonic Neural Network implementations have been gaining considerable attention as a potentia...
Reservoir Computing[1] is a new approach to study and use Neural Networks, which try to mimic a brai...
Als uitgangspunt fungeerde de vraag 'hoe op basis van toegekende rechtsaanspraken tot een doelmatige...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
We propose photonic reservoir computing as a new approach to optical signal processing and it can be...
Photonics-based neural networks promise to outperform electronic counterparts accelerating neural n...
International audienceWe propose a scalable photonic architecture for implementation of feedforward ...
International audienceWe propose a physical alternative of software based approaches for advanced cl...
Machine Learning (ML) approaches like Deep Neural Networks (DNNs) have emerged as a powerful tool fo...
International audienceThe recognition of human actions in video streams is a challenging task in com...
Driven by the remarkable breakthroughs during the past decade, photonics neural networks have experi...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
We review a novel paradigm that has emerged in analogue neuromorphic optical computing. The goal is ...
Despite ever increasing computational power, recognition and classification problems remain challeng...
Photonic computing has attracted much attention due to its great potential to accelerate artificial ...
[eng] Photonic Neural Network implementations have been gaining considerable attention as a potentia...
Reservoir Computing[1] is a new approach to study and use Neural Networks, which try to mimic a brai...
Als uitgangspunt fungeerde de vraag 'hoe op basis van toegekende rechtsaanspraken tot een doelmatige...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
We propose photonic reservoir computing as a new approach to optical signal processing and it can be...
Photonics-based neural networks promise to outperform electronic counterparts accelerating neural n...