Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization

Sparse representation is a powerful statistical technique that has been widely utilized in image restoration applications. In this paper, an improved sparse representation model regularized by a low-rank constraint is proposed for single image deblurring. The key motivation for the proposed model li...

Full description

Bibliographic Details
Main Authors: Jinyang Li, Zhijing Liu
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/19/5/1143
id doaj-66bf0032696d460cb5cc541101e7e091
record_format Article
spelling doaj-66bf0032696d460cb5cc541101e7e0912020-11-25T01:06:47ZengMDPI AGSensors1424-82202019-03-01195114310.3390/s19051143s19051143Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank RegularizationJinyang Li0Zhijing Liu1School of Computer Science and Technology, Xidian University, Xi’an 710071, ChinaSchool of Computer Science and Technology, Xidian University, Xi’an 710071, ChinaSparse representation is a powerful statistical technique that has been widely utilized in image restoration applications. In this paper, an improved sparse representation model regularized by a low-rank constraint is proposed for single image deblurring. The key motivation for the proposed model lies in the observation that natural images are full of self-repetitive structures and they can be represented by similar patterns. However, as input images contain noise, blur, and other visual artifacts, extracting nonlocal similarities only with patch clustering algorithms is insufficient. In this paper, we first propose an ensemble dictionary learning method to represent different similar patterns. Then, low-rank embedded regularization is directly imposed on inputs to regularize the desired solution space which favors natural and sharp structures. The proposed method can be optimized by alternatively solving nuclear norm minimization and l 1 norm minimization problems to achieve higher restoration quality. Experimental comparisons validate the superior results of the proposed method compared with other deblurring algorithms in terms of visual quality and quantitative metrics.http://www.mdpi.com/1424-8220/19/5/1143image deblurringlow-rank constraintself-repetitive structuresnonlocal similarityensemble dictionary learning
collection DOAJ
language English
format Article
sources DOAJ
author Jinyang Li
Zhijing Liu
spellingShingle Jinyang Li
Zhijing Liu
Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization
Sensors
image deblurring
low-rank constraint
self-repetitive structures
nonlocal similarity
ensemble dictionary learning
author_facet Jinyang Li
Zhijing Liu
author_sort Jinyang Li
title Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization
title_short Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization
title_full Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization
title_fullStr Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization
title_full_unstemmed Ensemble Dictionary Learning for Single Image Deblurring via Low-Rank Regularization
title_sort ensemble dictionary learning for single image deblurring via low-rank regularization
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-03-01
description Sparse representation is a powerful statistical technique that has been widely utilized in image restoration applications. In this paper, an improved sparse representation model regularized by a low-rank constraint is proposed for single image deblurring. The key motivation for the proposed model lies in the observation that natural images are full of self-repetitive structures and they can be represented by similar patterns. However, as input images contain noise, blur, and other visual artifacts, extracting nonlocal similarities only with patch clustering algorithms is insufficient. In this paper, we first propose an ensemble dictionary learning method to represent different similar patterns. Then, low-rank embedded regularization is directly imposed on inputs to regularize the desired solution space which favors natural and sharp structures. The proposed method can be optimized by alternatively solving nuclear norm minimization and l 1 norm minimization problems to achieve higher restoration quality. Experimental comparisons validate the superior results of the proposed method compared with other deblurring algorithms in terms of visual quality and quantitative metrics.
topic image deblurring
low-rank constraint
self-repetitive structures
nonlocal similarity
ensemble dictionary learning
url http://www.mdpi.com/1424-8220/19/5/1143
work_keys_str_mv AT jinyangli ensembledictionarylearningforsingleimagedeblurringvialowrankregularization
AT zhijingliu ensembledictionarylearningforsingleimagedeblurringvialowrankregularization
_version_ 1725188295788331008