Litcius/Paper detail

Identifying structured light modes in a desert environment using machine learning algorithms

Amr M. Ragheb, Waddah S. Saif, Abderrahmen Trichili, Islam Ashry, Maged Abdullah Esmail, Majid Altamimi, Ahmed Almaiman, Essam Saleh Altubaishi, Boon S. Ooi, Mohamed‐Slim Alouini, Saleh A. Alshebeili

2020Optics Express35 citationsDOIOpen Access PDF

Abstract

The unique orthogonal shapes of structured light beams have attracted researchers to use as information carriers. Structured light-based free space optical communication is subject to atmospheric propagation effects such as rain, fog, and rain, which complicate the mode demultiplexing process using conventional technology. In this context, we experimentally investigate the detection of Laguerre Gaussian and Hermite Gaussian beams under dust storm conditions using machine learning algorithms. Different algorithms are employed to detect various structured light encoding schemes including the use of a convolutional neural network (CNN), support vector machine, and k-nearest neighbor. We report an identification accuracy of 99% under a visibility level of 9 m. The CNN approach is further used to estimate the visibility range of a dusty communication channel.

Topics & Concepts

AlgorithmComputer scienceConvolutional neural networkContext (archaeology)VisibilityOpticsArtificial intelligenceGaussian processStructured lightMultiplexingGaussianMachine learningPhysicsTelecommunicationsPaleontologyQuantum mechanicsBiologyOptical Wireless Communication TechnologiesOrbital Angular Momentum in OpticsRadio Wave Propagation Studies