Spatial Nonlinear Conversion of Structured Light for Machine Learning Based Ultra-Accurate Information Networks

Zilong Zhang*, Wei He, Suyi Zhao, Yuan Gao, Xin Wang, Xiaotian Li, Yuqi Wang, Yunfei Ma, Yetong Hu, Yijie Shen*, Changming Zhao

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)

Abstract

Structured light can be encoded to carry information for free-space optical communications with an extended degree of freedom to increase the capacity, however, the accuracy issue along with capacity increase is one of the biggest challenges that prevent practical applications. To achieve high accuracy with high capacity by a simple method, they propose the spatial nonlinear conversion of structured light into a communication network, especially, realizing an ultra-high-accuracy point-to-multipoint (PtoMP) information transmission link. A series of coherently superposed spatial modes and their spatial nonlinear conversion states are used as information carriers to replace the prior orbital angular momentum beams and greatly expand channel capacity within quite low spatial mode order. Through the spatial nonlinear conversion of simple dual-mode superposition and a very basic neural network for machine learning-based recognition, as high as 99.5% accuracy for more than 500 modes is obtained. By a combination of diffuse reflection screens and multiple CCDs, the large observation angle PtoMP information transmission is also proved to be feasible. This work paves the way for practical large-scale multi-party information networks using structured light.

Original languageEnglish
Article number2301225
JournalLaser and Photonics Reviews
Volume18
Issue number6
DOIs
Publication statusPublished - Jun 2024

Keywords

  • deep learning
  • information transmission
  • nonlinear spatial conversion
  • structured laser beam

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