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Improved Machine Learning Approach for Wavefront Sensing

In the adaptive optics (AO) system, to improve the effectiveness and accuracy of wavefront sensing-less technology, a phase-based sensing approach using machine learning is proposed. In contrast to the traditional gradient-based optimization methods, the model we designed is based on an improved con...

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Autores principales: Guo, Hongyang, Xu, Yangjie, Li, Qing, Du, Shengping, He, Dong, Wang, Qiang, Huang, Yongmei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6720461/
https://www.ncbi.nlm.nih.gov/pubmed/31412562
http://dx.doi.org/10.3390/s19163533
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author Guo, Hongyang
Xu, Yangjie
Li, Qing
Du, Shengping
He, Dong
Wang, Qiang
Huang, Yongmei
author_facet Guo, Hongyang
Xu, Yangjie
Li, Qing
Du, Shengping
He, Dong
Wang, Qiang
Huang, Yongmei
author_sort Guo, Hongyang
collection PubMed
description In the adaptive optics (AO) system, to improve the effectiveness and accuracy of wavefront sensing-less technology, a phase-based sensing approach using machine learning is proposed. In contrast to the traditional gradient-based optimization methods, the model we designed is based on an improved convolutional neural network. Specifically, the deconvolution layer, which reconstructs unknown input by measuring output, is introduced to represent the phase maps of the point spread functions at the in focus and defocus planes. The improved convolutional neural network is utilized to establish the nonlinear mapping between the input point spread functions and the corresponding phase maps of the optical system. Once well trained, the model can directly output the aberration map of the optical system with good precision. Adequate simulations and experiments are introduced to demonstrate the accuracy and real-time performance of the proposed method. The simulations show that even when atmospheric conditions D/r(0) = 20, the detection root-mean-square of wavefront error of the proposed method is 0.1307 λ, which has a better accuracy than existing neural networks. When D/r(0) = 15 and 10, the root-mean-square error is respectively 0.0909 λ and 0.0718 λ. It has certain applicative value in the case of medium and weak turbulence. The root-mean-square error of experiment results with D/r(0) = 20 is 0.1304 λ, proving the correctness of simulations. Moreover, this method only needs 12 ms to accomplish the calculation and it has broad prospects for real-time wavefront sensing.
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spelling pubmed-67204612019-09-10 Improved Machine Learning Approach for Wavefront Sensing Guo, Hongyang Xu, Yangjie Li, Qing Du, Shengping He, Dong Wang, Qiang Huang, Yongmei Sensors (Basel) Article In the adaptive optics (AO) system, to improve the effectiveness and accuracy of wavefront sensing-less technology, a phase-based sensing approach using machine learning is proposed. In contrast to the traditional gradient-based optimization methods, the model we designed is based on an improved convolutional neural network. Specifically, the deconvolution layer, which reconstructs unknown input by measuring output, is introduced to represent the phase maps of the point spread functions at the in focus and defocus planes. The improved convolutional neural network is utilized to establish the nonlinear mapping between the input point spread functions and the corresponding phase maps of the optical system. Once well trained, the model can directly output the aberration map of the optical system with good precision. Adequate simulations and experiments are introduced to demonstrate the accuracy and real-time performance of the proposed method. The simulations show that even when atmospheric conditions D/r(0) = 20, the detection root-mean-square of wavefront error of the proposed method is 0.1307 λ, which has a better accuracy than existing neural networks. When D/r(0) = 15 and 10, the root-mean-square error is respectively 0.0909 λ and 0.0718 λ. It has certain applicative value in the case of medium and weak turbulence. The root-mean-square error of experiment results with D/r(0) = 20 is 0.1304 λ, proving the correctness of simulations. Moreover, this method only needs 12 ms to accomplish the calculation and it has broad prospects for real-time wavefront sensing. MDPI 2019-08-13 /pmc/articles/PMC6720461/ /pubmed/31412562 http://dx.doi.org/10.3390/s19163533 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Guo, Hongyang
Xu, Yangjie
Li, Qing
Du, Shengping
He, Dong
Wang, Qiang
Huang, Yongmei
Improved Machine Learning Approach for Wavefront Sensing
title Improved Machine Learning Approach for Wavefront Sensing
title_full Improved Machine Learning Approach for Wavefront Sensing
title_fullStr Improved Machine Learning Approach for Wavefront Sensing
title_full_unstemmed Improved Machine Learning Approach for Wavefront Sensing
title_short Improved Machine Learning Approach for Wavefront Sensing
title_sort improved machine learning approach for wavefront sensing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6720461/
https://www.ncbi.nlm.nih.gov/pubmed/31412562
http://dx.doi.org/10.3390/s19163533
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