A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design

With the rapid development of networks and the emergence of various devices, images have become the main form of information transmission in real life. Image restoration, as an important branch of image processing, can be applied to real-life situations such as pixel loss in image transmission or ne...

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Main Author: Chen Li
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Advances in Mathematical Physics
Online Access:http://dx.doi.org/10.1155/2021/4040497
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author Chen Li
author_facet Chen Li
author_sort Chen Li
collection DOAJ
description With the rapid development of networks and the emergence of various devices, images have become the main form of information transmission in real life. Image restoration, as an important branch of image processing, can be applied to real-life situations such as pixel loss in image transmission or network prone to packet loss. However, existing image restoration algorithms have disadvantages such as fuzzy restoration effect and slow speed; to solve such problems, this paper adopts a dual discriminator model based on generative adversarial networks, which effectively improves the restoration accuracy by adding local discriminators to track the information of local missing regions of images. However, the model is not optimistic in generating reasonable semantic information, and for this reason, a partial differential equation-based image restoration model is proposed. A classifier and a feature extraction network are added to the dual discriminator model to provide category, style, and content loss constraints to the generative network, respectively. To address the training instability problem of discriminator design, spectral normalization is introduced to the discriminator design. Extensive experiments are conducted on a data dataset of partial differential equations, and the results show that the partial differential equation-based image restoration model provides significant improvements in image restoration over previous methods and that image restoration techniques are exceptionally important in the application of environmental art design.
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spelling doaj-art-9a962eb4105d4f0c91daf254f80f23e42025-08-20T02:20:16ZengWileyAdvances in Mathematical Physics1687-91392021-01-01202110.1155/2021/4040497A Partial Differential Equation-Based Image Restoration Method in Environmental Art DesignChen Li0Office of Informatization ManagementWith the rapid development of networks and the emergence of various devices, images have become the main form of information transmission in real life. Image restoration, as an important branch of image processing, can be applied to real-life situations such as pixel loss in image transmission or network prone to packet loss. However, existing image restoration algorithms have disadvantages such as fuzzy restoration effect and slow speed; to solve such problems, this paper adopts a dual discriminator model based on generative adversarial networks, which effectively improves the restoration accuracy by adding local discriminators to track the information of local missing regions of images. However, the model is not optimistic in generating reasonable semantic information, and for this reason, a partial differential equation-based image restoration model is proposed. A classifier and a feature extraction network are added to the dual discriminator model to provide category, style, and content loss constraints to the generative network, respectively. To address the training instability problem of discriminator design, spectral normalization is introduced to the discriminator design. Extensive experiments are conducted on a data dataset of partial differential equations, and the results show that the partial differential equation-based image restoration model provides significant improvements in image restoration over previous methods and that image restoration techniques are exceptionally important in the application of environmental art design.http://dx.doi.org/10.1155/2021/4040497
spellingShingle Chen Li
A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design
Advances in Mathematical Physics
title A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design
title_full A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design
title_fullStr A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design
title_full_unstemmed A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design
title_short A Partial Differential Equation-Based Image Restoration Method in Environmental Art Design
title_sort partial differential equation based image restoration method in environmental art design
url http://dx.doi.org/10.1155/2021/4040497
work_keys_str_mv AT chenli apartialdifferentialequationbasedimagerestorationmethodinenvironmentalartdesign
AT chenli partialdifferentialequationbasedimagerestorationmethodinenvironmentalartdesign