Litcius/Paper detail

Deep Learning Recognition of Orbital Angular Momentum Modes Over Atmospheric Turbulence Channels Assisted by Vortex Phase Modulation

Yu'an Xiang, Linzhou Zeng, Man Wu, Zhaoming Luo, Yougang Ke

2022IEEE photonics journal16 citationsDOIOpen Access PDF

Abstract

Accurate recognition of orbital angular momentum (OAM) modes is a major challenge for OAM-based optical communications over atmospheric turbulence channels. The turbulence-induced distortions cause difficulties for the receiver to distinguish between adjacent OAM modes. Deep learning, such as convolutional neural networks (CNN), has been a promising technique in solving this problem. To improve the recognition performance, we propose a vortex modulation method that can magnify the subtle differences between closely adjacent OAM states. This allows the CNN to capture the image features more effectively and to recognize the topological charges more accurately. Numerical results show high recognition accuracy for both integer topological charges and fractional ones even under strong turbulence intensity and long propagation distance, which demonstrate the utility of the proposed method.

Topics & Concepts

Angular momentumPhysicsOptical vortexTurbulenceModulation (music)VortexConvolutional neural networkTopology (electrical circuits)Phase (matter)OpticsPhase modulationComputer scienceComputational physicsArtificial intelligenceClassical mechanicsQuantum mechanicsMathematicsAcousticsThermodynamicsCombinatoricsOrbital Angular Momentum in OpticsOptical Wireless Communication TechnologiesSperm and Testicular Function