Cascading photonic reservoirs with deep neural networks increases computational performance

Onderzoeksoutput: Conference paper

Samenvatting

Deep neural networks (DNNs) have been successfully applied to solving complex problems, such as pattern recognition when analyzing big data. To achieve a good computational performance, these networks are often designed such that they contain many trainable parameters. However, this often makes DNNs very energy-intensive and time-consuming to train. In this work, we propose to use a photonic reservoir to preprocess the input data instead of directly injecting it into the DNN. A photonic reservoir consists of a network of many randomly connected nodes which do not need to be trained. It forms an additional layer to the deep neural network and can transform the input data into a state in a higher dimensional state-space. This allows us to reduce the size of the DNN, and in turn, the amount of training required for the DNN, due to less backpropagation being performed for a smaller DNN.
Originele taal-2English
TitelProceedings of SPIE
RedacteurenFrancesco Ferranti, Mehdi Keshavarz Hedayati, Andrea Fratalocchi
Aantal pagina's5
DOI's
StatusPublished - 10 apr 2024
EvenementSPIE Photonics Europe 2024 - Strasbourg, France
Duur: 7 apr 202411 apr 2024

Publicatie series

NaamProceedings of SPIE - The International Society for Optical Engineering
Volume13017
ISSN van geprinte versie0277-786X
ISSN van elektronische versie1996-756X

Conference

ConferenceSPIE Photonics Europe 2024
Land/RegioFrance
StadStrasbourg
Periode7/04/2411/04/24

Bibliografische nota

Publisher Copyright:
© 2024 SPIE.

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