Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design

Image restoration is a research hotspot in computer vision and computer graphics. It uses the effective information in the image to fill in the information of the designated damaged area. This has high application value in environmental design, film and television special effects production, old pho...

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Main Authors: Bo Liang, Xin-xin Jia, Yuan Lu
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9035163
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spelling doaj-ed011b343b7b42c6b4ee047d78a4d7cf2021-06-07T02:14:12ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/9035163Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art DesignBo Liang0Xin-xin Jia1Yuan Lu2Huaqing CollegeHuaqing CollegeXi’an University of Architecture and TechnologyImage restoration is a research hotspot in computer vision and computer graphics. It uses the effective information in the image to fill in the information of the designated damaged area. This has high application value in environmental design, film and television special effects production, old photo restoration, and removal of text or obstacles in images. In traditional sparse representation image restoration algorithms, the size of dictionary atoms is often fixed. When repairing the texture area, the dictionary atom will be too large to cause blurring. When repairing a smooth area, the dictionary atom is too small to cause the extension of the area, which affects the image repair effect. In this paper, the structural sparsity of the block to be repaired is used to adjust the repair priority. By analyzing the structure information of the repair block located in different regions such as texture, edge, and smoothing, the size of the dictionary atom is adaptively determined. This paper proposes a color image restoration method that adaptively determines the size of dictionary atoms and discusses a model based on the partial differential equation restoration method. Through simulation experiments combined with subjective and objective standards, the repair results are evaluated and analyzed. The simulation results show that the algorithm can effectively overcome the shortcomings of blurred details and region extension in fixed dictionary restoration, and the restoration effect has been significantly improved. Compared with the results of several other classic algorithms, it shows the effectiveness of the algorithm in this paper.http://dx.doi.org/10.1155/2021/9035163
collection DOAJ
language English
format Article
sources DOAJ
author Bo Liang
Xin-xin Jia
Yuan Lu
spellingShingle Bo Liang
Xin-xin Jia
Yuan Lu
Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design
Complexity
author_facet Bo Liang
Xin-xin Jia
Yuan Lu
author_sort Bo Liang
title Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design
title_short Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design
title_full Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design
title_fullStr Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design
title_full_unstemmed Application of Adaptive Image Restoration Algorithm Based on Sparsity of Block Structure in Environmental Art Design
title_sort application of adaptive image restoration algorithm based on sparsity of block structure in environmental art design
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description Image restoration is a research hotspot in computer vision and computer graphics. It uses the effective information in the image to fill in the information of the designated damaged area. This has high application value in environmental design, film and television special effects production, old photo restoration, and removal of text or obstacles in images. In traditional sparse representation image restoration algorithms, the size of dictionary atoms is often fixed. When repairing the texture area, the dictionary atom will be too large to cause blurring. When repairing a smooth area, the dictionary atom is too small to cause the extension of the area, which affects the image repair effect. In this paper, the structural sparsity of the block to be repaired is used to adjust the repair priority. By analyzing the structure information of the repair block located in different regions such as texture, edge, and smoothing, the size of the dictionary atom is adaptively determined. This paper proposes a color image restoration method that adaptively determines the size of dictionary atoms and discusses a model based on the partial differential equation restoration method. Through simulation experiments combined with subjective and objective standards, the repair results are evaluated and analyzed. The simulation results show that the algorithm can effectively overcome the shortcomings of blurred details and region extension in fixed dictionary restoration, and the restoration effect has been significantly improved. Compared with the results of several other classic algorithms, it shows the effectiveness of the algorithm in this paper.
url http://dx.doi.org/10.1155/2021/9035163
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AT xinxinjia applicationofadaptiveimagerestorationalgorithmbasedonsparsityofblockstructureinenvironmentalartdesign
AT yuanlu applicationofadaptiveimagerestorationalgorithmbasedonsparsityofblockstructureinenvironmentalartdesign
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