Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network

The super-resolution reconstruction method based on deep convolutional neural network has a high peak signal-to-noise ratio (PSNR), but the reconstruction results have the problem of lack of high-frequency information and texture details and poor visual perception under large-scale factors. Aiming a...

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Main Author: PENG Yanfei, GAO Yi, DU Tingting, SANG Yu, ZI Lingling
Format: Article
Language:zho
Published: Journal of Computer Engineering and Applications Beijing Co., Ltd., Science Press 2020-09-01
Series:Jisuanji kexue yu tansuo
Subjects:
Online Access:http://fcst.ceaj.org/CN/abstract/abstract2366.shtml
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author PENG Yanfei, GAO Yi, DU Tingting, SANG Yu, ZI Lingling
author_facet PENG Yanfei, GAO Yi, DU Tingting, SANG Yu, ZI Lingling
author_sort PENG Yanfei, GAO Yi, DU Tingting, SANG Yu, ZI Lingling
collection DOAJ
description The super-resolution reconstruction method based on deep convolutional neural network has a high peak signal-to-noise ratio (PSNR), but the reconstruction results have the problem of lack of high-frequency information and texture details and poor visual perception under large-scale factors. Aiming at this problem, a single image super-resolution reconstruction method based on generative adversarial network is proposed. Firstly, the hinge loss in the migration support vector machine is taken as the objective function, and then the Charbonnier loss which is more stable and more anti-noise is used instead of the L2 loss function. Finally, the batch normalization layer which is unfavorable to the super resolution of the image in the residual block and discriminator is removed, and the spectral normalization is used in the generator and discriminator to reduce the computational overhead and stabilize the model training. The experimental results of 4X upscaling show that compared with other comparison methods, the PSNR value of the reconstructed image is improved by up to 4.6 dB and the SSIM value is increased by 0.1, and the test time is shorter. The experimental data and effect diagram show that the super-resolution image reconstructed by this method has better visual effect and higher PSNR and SSIM values.
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spelling doaj.art-9f85062f07f6472ba3db24f6b5c4c0952022-12-21T18:39:29ZzhoJournal of Computer Engineering and Applications Beijing Co., Ltd., Science PressJisuanji kexue yu tansuo1673-94182020-09-011491612162010.3778/j.issn.1673-9418.1910067Single Image Super-Resolution Reconstruction Method for Generative Adversarial NetworkPENG Yanfei, GAO Yi, DU Tingting, SANG Yu, ZI Lingling0School of Electronic and Information Engineering, Liaoning Technical University, Huludao, Liaoning 125105, ChinaThe super-resolution reconstruction method based on deep convolutional neural network has a high peak signal-to-noise ratio (PSNR), but the reconstruction results have the problem of lack of high-frequency information and texture details and poor visual perception under large-scale factors. Aiming at this problem, a single image super-resolution reconstruction method based on generative adversarial network is proposed. Firstly, the hinge loss in the migration support vector machine is taken as the objective function, and then the Charbonnier loss which is more stable and more anti-noise is used instead of the L2 loss function. Finally, the batch normalization layer which is unfavorable to the super resolution of the image in the residual block and discriminator is removed, and the spectral normalization is used in the generator and discriminator to reduce the computational overhead and stabilize the model training. The experimental results of 4X upscaling show that compared with other comparison methods, the PSNR value of the reconstructed image is improved by up to 4.6 dB and the SSIM value is increased by 0.1, and the test time is shorter. The experimental data and effect diagram show that the super-resolution image reconstructed by this method has better visual effect and higher PSNR and SSIM values.http://fcst.ceaj.org/CN/abstract/abstract2366.shtmlsuper-resolution reconstructiongenerative adversarial network (gan)deep learningconvolutional neural network (cnn)loss function
spellingShingle PENG Yanfei, GAO Yi, DU Tingting, SANG Yu, ZI Lingling
Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network
Jisuanji kexue yu tansuo
super-resolution reconstruction
generative adversarial network (gan)
deep learning
convolutional neural network (cnn)
loss function
title Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network
title_full Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network
title_fullStr Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network
title_full_unstemmed Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network
title_short Single Image Super-Resolution Reconstruction Method for Generative Adversarial Network
title_sort single image super resolution reconstruction method for generative adversarial network
topic super-resolution reconstruction
generative adversarial network (gan)
deep learning
convolutional neural network (cnn)
loss function
url http://fcst.ceaj.org/CN/abstract/abstract2366.shtml
work_keys_str_mv AT pengyanfeigaoyidutingtingsangyuzilingling singleimagesuperresolutionreconstructionmethodforgenerativeadversarialnetwork