On the use of deep neural networks in optical communications
Abstract
Information transfer rates in optical communications may be dramatically increased by making use of spatially non-Gaussian states of light. Here we demonstrate the ability of deep neural networks to classify numerically-generated, noisy Laguerre-Gauss modes of up to 100 quanta of orbital angular momentum with near-unity fidelity. The scheme relies only on the intensity profile of the detected modes, allowing for considerable simplification of current measurement schemes required to sort the states containing increasing degrees of orbital angular momentum. We also present results that show the strength of deep neural networks in the classification of experimental superpositions of Laguerre-Gauss modes when the networks are trained solely using simulated images. It is anticipated that these results will allow for an enhancement of current optical communications technologies.
- Publication:
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Applied Optics
- Pub Date:
- May 2018
- DOI:
- 10.1364/AO.57.004180
- arXiv:
- arXiv:1806.06663
- Bibcode:
- 2018ApOpt..57.4180L
- Keywords:
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- Physics - Applied Physics;
- Physics - Optics;
- Quantum Physics
- E-Print:
- 10 pages, 15 figures. \copyright 2018 Optical Society of America. Users may use, reuse, and build upon the article, or use the article for text or data mining, so long as such uses are for non-commercial purposes and appropriate attribution is maintained. All other rights are reserved