• PhotoniX
  • Vol. 2, Issue 1, 8 (2021)
Kaiqiang Wang1, MengMeng Zhang1, Ju Tang1, Lingke Wang1, Liusen Hu2, Xiaoyan Wu2, Wei Li2, Jianglei Di1, Guodong Liu2, and Jianlin Zhao1、*
Author Affiliations
  • 1MOE Key Laboratory of Material Physics and Chemistry under Extraordinary Conditions, Shaanxi Key Laboratory of Optical Information Technology, School of Physical Science and Technology, Northwestern Polytechnical University, 710129 Xi’an, China
  • 2Institute of Fluid Physics, China Academy of Engineering Physics, 621900 Mianyang, China
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    DOI: 10.1186/s43074-021-00030-4 Cite this Article
    Kaiqiang Wang, MengMeng Zhang, Ju Tang, Lingke Wang, Liusen Hu, Xiaoyan Wu, Wei Li, Jianglei Di, Guodong Liu, Jianlin Zhao. Deep learning wavefront sensing and aberration correction in atmospheric turbulence[J]. PhotoniX, 2021, 2(1): 8 Copy Citation Text show less

    Abstract

    Deep learning neural networks are used for wavefront sensing and aberration correction in atmospheric turbulence without any wavefront sensor (i.e. reconstruction of the wavefront aberration phase from the distorted image of the object). We compared and found the characteristics of the direct and indirect reconstruction ways: (i) directly reconstructing the aberration phase; (ii) reconstructing the Zernike coefficients and then calculating the aberration phase. We verified the generalization ability and performance of the network for a single object and multiple objects. What’s more, we verified the correction effect for a turbulence pool and the feasibility for a real atmospheric turbulence environment.
    Kaiqiang Wang, MengMeng Zhang, Ju Tang, Lingke Wang, Liusen Hu, Xiaoyan Wu, Wei Li, Jianglei Di, Guodong Liu, Jianlin Zhao. Deep learning wavefront sensing and aberration correction in atmospheric turbulence[J]. PhotoniX, 2021, 2(1): 8
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