Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/1029
Title: Speckle-based deep learning approach for classification of orbital angular momentum modes
Authors: Venugopal Raskatla, B. P. Singh, Satyajeet Patil, Vijay Kumar and R. P. Singh
Keywords: Speckle - based
deep learning
orbital angular momentum
Issue Date: 1-Apr-2022
Publisher: Optica Publishing Group
Citation: https://doi.org/10.1364/JOSAA.446352
Abstract: We present a speckle-based deep learning approach for orbital angular momentum (OAM) mode classification. In this method,we have simulated the speckle fields of the Laguerre–Gauss (LG),Hermite–Gauss (HG), and superpositionmodes by multiplying these modes with a random phase function and then taking the Fourier transform. The intensity images of these speckle fields are fed to a convolutional neural network (CNN) for training a classification model that classifies modes with an accuracy >99%.We have trained and tested our method against the influence of atmospheric turbulence by training the models with perturbed LG, HG, and superposition modes and found that models are still able to classify modes with an accuracy>98%.We have also trained and tested our model with experimental speckle images of LG modes generated by three different ground glasses. We have achieved a maximum accuracy of 96% for the most robust case, where the model is trained with all simulated and experimental data. The novelty of the technique is that one can do the mode classification just by using a small portion of the speckle fields because speckle grains contain the information about the original mode, thus eliminating the need for capturing the whole modal field, which is modal dependent.
URI: http://localhost:8080/xmlui/handle/123456789/1029
Appears in Collections:Physics

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