Trainable fourth-order partial differential equations for image noise removal

Image processing by partial differential equations (PDEs) has been an active topic in the area of image denoising, which is an important task in computer vision. In PDE-based methods for unprocessed image process ing, the original image is considered as the initial value for the PDE and the solution...

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Main Authors: N. Khoeiniha, S.M. Hosseini, R. Davoudi
Format: Article
Language:English
Published: Ferdowsi University of Mashhad 2021-09-01
Series:Iranian Journal of Numerical Analysis and Optimization
Subjects:
Online Access:https://ijnao.um.ac.ir/article_39916_233ad80857a440522d37bf74b56f3f68.pdf
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spelling doaj-6ffd66ce80be48af8ab5a3cb27e8a6662021-10-10T05:45:33ZengFerdowsi University of MashhadIranian Journal of Numerical Analysis and Optimization2423-69772423-69692021-09-0111223526010.22067/ijnao.2021.67760.100239916Trainable fourth-order partial differential equations for image noise removalN. Khoeiniha0S.M. Hosseini1R. Davoudi2Department of Applied athematics, Faculty of Mathematical Sciences, Tarbiat Modares University, Tehran, Iran.Department of Applied athematics, Faculty of Mathematical Sciences, Tarbiat Modares University, Tehran, Iran.Department of Applied athematics, Faculty of Mathematical Sciences, Tarbiat Modares University, Tehran, Iran.Image processing by partial differential equations (PDEs) has been an active topic in the area of image denoising, which is an important task in computer vision. In PDE-based methods for unprocessed image process ing, the original image is considered as the initial value for the PDE and the solution of the equation is the outcome of the model. Despite the advan tages of using PDEs in image processing, designing and modeling different equations for various types of applications have always been a challenging and interesting problem. In this article, we aim to tackle this problem by introducing a fourth-order equation with flexible and trainable coefficients, and with the help of an optimal control problem, the coefficients are determined; therefore the proposed model adapts itself to each particular application. At the final stage, the image enhancement is performed on the noisy test image and the performance of our proposed method is compared to other PDE-based models.https://ijnao.um.ac.ir/article_39916_233ad80857a440522d37bf74b56f3f68.pdfpartial differential equationsimage processingimage denoisingoptimal control
collection DOAJ
language English
format Article
sources DOAJ
author N. Khoeiniha
S.M. Hosseini
R. Davoudi
spellingShingle N. Khoeiniha
S.M. Hosseini
R. Davoudi
Trainable fourth-order partial differential equations for image noise removal
Iranian Journal of Numerical Analysis and Optimization
partial differential equations
image processing
image denoising
optimal control
author_facet N. Khoeiniha
S.M. Hosseini
R. Davoudi
author_sort N. Khoeiniha
title Trainable fourth-order partial differential equations for image noise removal
title_short Trainable fourth-order partial differential equations for image noise removal
title_full Trainable fourth-order partial differential equations for image noise removal
title_fullStr Trainable fourth-order partial differential equations for image noise removal
title_full_unstemmed Trainable fourth-order partial differential equations for image noise removal
title_sort trainable fourth-order partial differential equations for image noise removal
publisher Ferdowsi University of Mashhad
series Iranian Journal of Numerical Analysis and Optimization
issn 2423-6977
2423-6969
publishDate 2021-09-01
description Image processing by partial differential equations (PDEs) has been an active topic in the area of image denoising, which is an important task in computer vision. In PDE-based methods for unprocessed image process ing, the original image is considered as the initial value for the PDE and the solution of the equation is the outcome of the model. Despite the advan tages of using PDEs in image processing, designing and modeling different equations for various types of applications have always been a challenging and interesting problem. In this article, we aim to tackle this problem by introducing a fourth-order equation with flexible and trainable coefficients, and with the help of an optimal control problem, the coefficients are determined; therefore the proposed model adapts itself to each particular application. At the final stage, the image enhancement is performed on the noisy test image and the performance of our proposed method is compared to other PDE-based models.
topic partial differential equations
image processing
image denoising
optimal control
url https://ijnao.um.ac.ir/article_39916_233ad80857a440522d37bf74b56f3f68.pdf
work_keys_str_mv AT nkhoeiniha trainablefourthorderpartialdifferentialequationsforimagenoiseremoval
AT smhosseini trainablefourthorderpartialdifferentialequationsforimagenoiseremoval
AT rdavoudi trainablefourthorderpartialdifferentialequationsforimagenoiseremoval
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