Structure–texture image decomposition using a new non‐local TV‐Hilbert model

Combining the advantages of the non‐local total variation (TV) and the Gabor function, a new Gabor function based non‐local TV‐Hilbert model is presented to separate the structure and texture components of the image. Computationally, by introducing the dual form of the non‐local TV, the authors refo...

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Main Author: Yehu Lv
Format: Article
Language:English
Published: Wiley 2020-09-01
Series:IET Image Processing
Subjects:
Online Access:https://doi.org/10.1049/iet-ipr.2019.0392
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spelling doaj-481e6243697648699bd52964e8a61ccc2021-07-16T05:10:33ZengWileyIET Image Processing1751-96591751-96672020-09-0114112525253110.1049/iet-ipr.2019.0392Structure–texture image decomposition using a new non‐local TV‐Hilbert modelYehu Lv0Institute of Mathematics, Hebei University of TechnologyTianjin300401People's Republic of ChinaCombining the advantages of the non‐local total variation (TV) and the Gabor function, a new Gabor function based non‐local TV‐Hilbert model is presented to separate the structure and texture components of the image. Computationally, by introducing the dual form of the non‐local TV, the authors reformulate the non‐local TV‐Hilbert minimisation problem into a convex–concave saddle‐point problem. In the aspect of solving algorithm, by transforming the Chambolle–Pock's first‐order primal–dual algorithm into a different equivalent form. The authors propose a proximal‐based primal–dual algorithm to solve the convex–concave saddle‐point problem. At last, experimental results demonstrate that the proposed new model outperforms several existing state‐of‐the‐art variational models.https://doi.org/10.1049/iet-ipr.2019.0392proximal‐based primal–dual algorithmChambolle–Pock's first‐order primal–dual algorithmconvex–concave saddle‐point problemnonlocal TV‐Hilbert minimisation problemtexture componentsGabor function
collection DOAJ
language English
format Article
sources DOAJ
author Yehu Lv
spellingShingle Yehu Lv
Structure–texture image decomposition using a new non‐local TV‐Hilbert model
IET Image Processing
proximal‐based primal–dual algorithm
Chambolle–Pock's first‐order primal–dual algorithm
convex–concave saddle‐point problem
nonlocal TV‐Hilbert minimisation problem
texture components
Gabor function
author_facet Yehu Lv
author_sort Yehu Lv
title Structure–texture image decomposition using a new non‐local TV‐Hilbert model
title_short Structure–texture image decomposition using a new non‐local TV‐Hilbert model
title_full Structure–texture image decomposition using a new non‐local TV‐Hilbert model
title_fullStr Structure–texture image decomposition using a new non‐local TV‐Hilbert model
title_full_unstemmed Structure–texture image decomposition using a new non‐local TV‐Hilbert model
title_sort structure–texture image decomposition using a new non‐local tv‐hilbert model
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2020-09-01
description Combining the advantages of the non‐local total variation (TV) and the Gabor function, a new Gabor function based non‐local TV‐Hilbert model is presented to separate the structure and texture components of the image. Computationally, by introducing the dual form of the non‐local TV, the authors reformulate the non‐local TV‐Hilbert minimisation problem into a convex–concave saddle‐point problem. In the aspect of solving algorithm, by transforming the Chambolle–Pock's first‐order primal–dual algorithm into a different equivalent form. The authors propose a proximal‐based primal–dual algorithm to solve the convex–concave saddle‐point problem. At last, experimental results demonstrate that the proposed new model outperforms several existing state‐of‐the‐art variational models.
topic proximal‐based primal–dual algorithm
Chambolle–Pock's first‐order primal–dual algorithm
convex–concave saddle‐point problem
nonlocal TV‐Hilbert minimisation problem
texture components
Gabor function
url https://doi.org/10.1049/iet-ipr.2019.0392
work_keys_str_mv AT yehulv structuretextureimagedecompositionusinganewnonlocaltvhilbertmodel
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