A new augmented Lagrangian primal dual algorithm for elastica regularization

Regularization is a key element of variational models in image processing. To overcome the weakness of models based on total variation, various high order (typically second order) regularization models have been proposed and studied recently. Among these, Euler's elastica energy based regulariz...

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Main Authors: Jianping Zhang, Ke Chen
Format: Article
Language:English
Published: SAGE Publishing 2016-12-01
Series:Journal of Algorithms & Computational Technology
Online Access:https://doi.org/10.1177/1748301816668044
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spelling doaj-cd2ccb2e40b648fbab211bb08fa6edf92020-11-25T03:24:41ZengSAGE PublishingJournal of Algorithms & Computational Technology1748-30181748-30262016-12-011010.1177/1748301816668044A new augmented Lagrangian primal dual algorithm for elastica regularizationJianping ZhangKe ChenRegularization is a key element of variational models in image processing. To overcome the weakness of models based on total variation, various high order (typically second order) regularization models have been proposed and studied recently. Among these, Euler's elastica energy based regularizer is perhaps the most interesting in terms of both mathematical and physical justifications. More importantly its success has been proven in applications; however it has been a major challenge to develop fast and effective algorithms. In this paper we propose a new idea for deriving a primal dual algorithm, based on Legendre–Fenchel transformations, for representing the elastica regularizer. Combined with an augmented Lagrangian for-mulation, we are able to derive an equivalent unconstrained optimization that has fewer variables to work with than previous works based on splitting methods. We shall present our algorithms for both the image restoration problem and the image segmentation model. The idea applies to other models where the elastica regularizer is required. Numerical experiments show that the proposed method can produce highly competitive results with better efficiency.https://doi.org/10.1177/1748301816668044
collection DOAJ
language English
format Article
sources DOAJ
author Jianping Zhang
Ke Chen
spellingShingle Jianping Zhang
Ke Chen
A new augmented Lagrangian primal dual algorithm for elastica regularization
Journal of Algorithms & Computational Technology
author_facet Jianping Zhang
Ke Chen
author_sort Jianping Zhang
title A new augmented Lagrangian primal dual algorithm for elastica regularization
title_short A new augmented Lagrangian primal dual algorithm for elastica regularization
title_full A new augmented Lagrangian primal dual algorithm for elastica regularization
title_fullStr A new augmented Lagrangian primal dual algorithm for elastica regularization
title_full_unstemmed A new augmented Lagrangian primal dual algorithm for elastica regularization
title_sort new augmented lagrangian primal dual algorithm for elastica regularization
publisher SAGE Publishing
series Journal of Algorithms & Computational Technology
issn 1748-3018
1748-3026
publishDate 2016-12-01
description Regularization is a key element of variational models in image processing. To overcome the weakness of models based on total variation, various high order (typically second order) regularization models have been proposed and studied recently. Among these, Euler's elastica energy based regularizer is perhaps the most interesting in terms of both mathematical and physical justifications. More importantly its success has been proven in applications; however it has been a major challenge to develop fast and effective algorithms. In this paper we propose a new idea for deriving a primal dual algorithm, based on Legendre–Fenchel transformations, for representing the elastica regularizer. Combined with an augmented Lagrangian for-mulation, we are able to derive an equivalent unconstrained optimization that has fewer variables to work with than previous works based on splitting methods. We shall present our algorithms for both the image restoration problem and the image segmentation model. The idea applies to other models where the elastica regularizer is required. Numerical experiments show that the proposed method can produce highly competitive results with better efficiency.
url https://doi.org/10.1177/1748301816668044
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