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Spatial Mode Correction of Single Photons using Machine Learning

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arxiv 2006.07760 v2 pith:SZF7LPL2 submitted 2020-06-14 quant-ph physics.optics

Spatial Mode Correction of Single Photons using Machine Learning

classification quant-ph physics.optics
keywords quantumspatialcorrectionphotonssingle-photoncommunicationlearninglevel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Spatial modes of light constitute valuable resources for a variety of quantum technologies ranging from quantum communication and quantum imaging to remote sensing. Nevertheless, their vulnerabilities to phase distortions, induced by random media, impose significant limitations on the realistic implementation of numerous quantum-photonic technologies. Unfortunately, this problem is exacerbated at the single-photon level. Over the last two decades, this challenging problem has been tackled through conventional schemes that utilize optical nonlinearities, quantum correlations, and adaptive optics. In this article, we exploit the self-learning and self-evolving features of artificial neural networks to correct the complex spatial profile of distorted Laguerre-Gaussian modes at the single-photon level. Furthermore, we demonstrate the possibility of boosting the performance of an optical communication protocol through the spatial mode correction of single photons using machine learning. Our results have important implications for real-time turbulence correction of structured photons and single-photon images.

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