Transport-based pattern recognition versus deep neural networks in underwater OAM communications

Abstract

Comparisons between machine learning and optimal transport-based approaches in classifying images are made in underwater orbital angular momentum (OAM) communications. A model is derived that justifies optimal transport for use in attenuated water environments. OAM pattern demultiplexing is performed using optimal transport and deep neural networks and compared to each other. Additionally, some of the complications introduced by signal attenuation are highlighted. The Radon cumulative distribution transform (R-CDT) is applied to OAM patterns to transform them to a linear subspace. The original OAM images and the R-CDT transformed patterns are used in several classification algorithms, and results are compared. The selected classification algorithms are the nearest subspace algorithm, a shallow convolutional neural network (CNN), and a deep neural network. It is shown that the R-CDT transformed images are more accurate than the original OAM images in pattern classification. Also, the nearest subspace algorithm performs better than the selected CNNs in OAM pattern classification in underwater environments.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jun 14, 2021
Source ID
10.1364/josaa.412463

Entities

People

  • Abbie T. Watnik
  • Gustavo K. Rohde
  • James R. Lindle
  • Jonathan M. Nichols
  • K. Peter Judd
  • Nicholas S. Flann
  • Patrick L. Neary

Organizations

  • National Institutes of Health
  • Space Dynamics Laboratory
  • United States Naval Research Laboratory
  • University of Virginia
  • Utah State University

Tags

Readers

  • Image Processing and Computer Vision.
  • Neural Network Machine Learning.
  • Optical Physics and Photonics.

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks
  • Space