Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming

Current mainstream super-resolution algorithms based on deep learning use a deep convolution neural network (CNN) framework to realize end-to-end learning from low-resolution (LR) image to high-resolution (HR) images, and have achieved good image restoration effects. However, as the number of layers...

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Main Authors: Jiali Tang, Chenrong Huang, Jian Liu, Hongjin Zhu
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/3/854
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spelling doaj-03da8b84682841219e9e3b59d7a3f04b2020-11-25T01:45:08ZengMDPI AGApplied Sciences2076-34172020-01-0110385410.3390/app10030854app10030854Image Super-Resolution Based on CNN Using Multilabel Gene Expression ProgrammingJiali Tang0Chenrong Huang1Jian Liu2Hongjin Zhu3College of Computer Engineering, Jiangsu University of Technology, Changzhou 213001, Jiangsu, ChinaSchool of Computer Engineering, Nanjing Institute of Technology, Nanjing 211167, Jiangsu, ChinaCollege of Computer Engineering, Jiangsu University of Technology, Changzhou 213001, Jiangsu, ChinaCollege of Computer Engineering, Jiangsu University of Technology, Changzhou 213001, Jiangsu, ChinaCurrent mainstream super-resolution algorithms based on deep learning use a deep convolution neural network (CNN) framework to realize end-to-end learning from low-resolution (LR) image to high-resolution (HR) images, and have achieved good image restoration effects. However, as the number of layers in the network is increased, better results are not necessarily obtained, and there will be problems such as slow training convergence, mismatched sample blocks, and unstable image restoration results. We propose a preclassified deep-learning algorithm (MGEP-SRCNN) using Multilabel Gene Expression Programming (MGEP), which screens out a sample sub-bank with high relevance to the target image before image block extraction, preclassifies samples in a multilabel framework, and then performs nonlinear mapping and image reconstruction. The algorithm is verified through standard images, and better objective image quality is obtained. The restoration effect under different magnification conditions is also better.https://www.mdpi.com/2076-3417/10/3/854super-resolution (sr)convolution neural network (cnn)gene expression programming (gep)deep learningimage preclassification
collection DOAJ
language English
format Article
sources DOAJ
author Jiali Tang
Chenrong Huang
Jian Liu
Hongjin Zhu
spellingShingle Jiali Tang
Chenrong Huang
Jian Liu
Hongjin Zhu
Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming
Applied Sciences
super-resolution (sr)
convolution neural network (cnn)
gene expression programming (gep)
deep learning
image preclassification
author_facet Jiali Tang
Chenrong Huang
Jian Liu
Hongjin Zhu
author_sort Jiali Tang
title Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming
title_short Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming
title_full Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming
title_fullStr Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming
title_full_unstemmed Image Super-Resolution Based on CNN Using Multilabel Gene Expression Programming
title_sort image super-resolution based on cnn using multilabel gene expression programming
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-01-01
description Current mainstream super-resolution algorithms based on deep learning use a deep convolution neural network (CNN) framework to realize end-to-end learning from low-resolution (LR) image to high-resolution (HR) images, and have achieved good image restoration effects. However, as the number of layers in the network is increased, better results are not necessarily obtained, and there will be problems such as slow training convergence, mismatched sample blocks, and unstable image restoration results. We propose a preclassified deep-learning algorithm (MGEP-SRCNN) using Multilabel Gene Expression Programming (MGEP), which screens out a sample sub-bank with high relevance to the target image before image block extraction, preclassifies samples in a multilabel framework, and then performs nonlinear mapping and image reconstruction. The algorithm is verified through standard images, and better objective image quality is obtained. The restoration effect under different magnification conditions is also better.
topic super-resolution (sr)
convolution neural network (cnn)
gene expression programming (gep)
deep learning
image preclassification
url https://www.mdpi.com/2076-3417/10/3/854
work_keys_str_mv AT jialitang imagesuperresolutionbasedoncnnusingmultilabelgeneexpressionprogramming
AT chenronghuang imagesuperresolutionbasedoncnnusingmultilabelgeneexpressionprogramming
AT jianliu imagesuperresolutionbasedoncnnusingmultilabelgeneexpressionprogramming
AT hongjinzhu imagesuperresolutionbasedoncnnusingmultilabelgeneexpressionprogramming
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