Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration

In order to improve the effect of turbulence degraded image restoration, aiming at the problem that the fuzzy solution is easy to be obtained by using the prior information constraint of gradient distribution under the framework of maximum a posteriori probability of blind restoration algorithm, thi...

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Format: Article
Language:zho
Published: The Northwestern Polytechnical University 2018-02-01
Series:Xibei Gongye Daxue Xuebao
Subjects:
Online Access:https://www.jnwpu.org/articles/jnwpu/pdf/2018/01/jnwpu2018361p103.pdf
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spelling doaj-2f2f0d7af3ca493480eec45224ff0d042021-05-02T20:24:29ZzhoThe Northwestern Polytechnical UniversityXibei Gongye Daxue Xuebao1000-27582018-02-0136110310910.1051/jnwpu/20183610103jnwpu2018361p103Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind RestorationIn order to improve the effect of turbulence degraded image restoration, aiming at the problem that the fuzzy solution is easy to be obtained by using the prior information constraint of gradient distribution under the framework of maximum a posteriori probability of blind restoration algorithm, this paper proposes a dark channel constraint and alternated direction multiplier optimization of turbulence degraded image blind restoration method.First, based on the idea of multi-scale, a dark channel prior constraint is imposed on the image and non-negative constraints and energy constraints are imposed on the point spread function at each level.Then, the kernel and image of the current scale are estimated by alternating iterations of coordinate descent method. When the maximum scale is reached, the final estimated blur kernel is obtained.Last, combined with the total variational model, the image details are quickly restored using the alternate direction optimization method. The experimental results show that the prior information constraint used in the proposed algorithm is advantageous to obtain a clear solution, and can converge to the global optimal solution in the total variational model, which can effectively suppress the artifacts produced in the image restoration process and recover a better target image detail.https://www.jnwpu.org/articles/jnwpu/pdf/2018/01/jnwpu2018361p103.pdfimage processingturbulence image blind restorationdark channel constraintalternated direction optimization methodsdeconvolutiontotal variationalpoint spread function
collection DOAJ
language zho
format Article
sources DOAJ
title Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
spellingShingle Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
Xibei Gongye Daxue Xuebao
image processing
turbulence image blind restoration
dark channel constraint
alternated direction optimization methods
deconvolution
total variational
point spread function
title_short Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
title_full Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
title_fullStr Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
title_full_unstemmed Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
title_sort dark channel constraint and alternated direction multiplier optimization of turbulence degraded image blind restoration
publisher The Northwestern Polytechnical University
series Xibei Gongye Daxue Xuebao
issn 1000-2758
publishDate 2018-02-01
description In order to improve the effect of turbulence degraded image restoration, aiming at the problem that the fuzzy solution is easy to be obtained by using the prior information constraint of gradient distribution under the framework of maximum a posteriori probability of blind restoration algorithm, this paper proposes a dark channel constraint and alternated direction multiplier optimization of turbulence degraded image blind restoration method.First, based on the idea of multi-scale, a dark channel prior constraint is imposed on the image and non-negative constraints and energy constraints are imposed on the point spread function at each level.Then, the kernel and image of the current scale are estimated by alternating iterations of coordinate descent method. When the maximum scale is reached, the final estimated blur kernel is obtained.Last, combined with the total variational model, the image details are quickly restored using the alternate direction optimization method. The experimental results show that the prior information constraint used in the proposed algorithm is advantageous to obtain a clear solution, and can converge to the global optimal solution in the total variational model, which can effectively suppress the artifacts produced in the image restoration process and recover a better target image detail.
topic image processing
turbulence image blind restoration
dark channel constraint
alternated direction optimization methods
deconvolution
total variational
point spread function
url https://www.jnwpu.org/articles/jnwpu/pdf/2018/01/jnwpu2018361p103.pdf
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