Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images

<b> </b>Improving the resolution of degraded radar echo images of weather radar systems can aid severe weather forecasting and disaster prevention. Previous approaches to this problem include classical super-resolution (SR) algorithms such as iterative back-projection (IBP) and a recent...

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Main Authors: Hongguang Chen, Xing Zhang, Yintian Liu, Qiangyu Zeng
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Atmosphere
Subjects:
Online Access:https://www.mdpi.com/2073-4433/10/9/555
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spelling doaj-a3f50f003e07459b87e7bed69a9be84a2020-11-24T20:53:05ZengMDPI AGAtmosphere2073-44332019-09-0110955510.3390/atmos10090555atmos10090555Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo ImagesHongguang Chen0Xing Zhang1Yintian Liu2Qiangyu Zeng3College of Software Engineering, Chengdu University of Information Technology, Chengdu 610225, ChinaCollege of Electronic Engineering, Chengdu University of Information Technology, Chengdu 610225, ChinaCollege of Software Engineering, Chengdu University of Information Technology, Chengdu 610225, ChinaCollege of Electronic Engineering, Chengdu University of Information Technology, Chengdu 610225, China<b> </b>Improving the resolution of degraded radar echo images of weather radar systems can aid severe weather forecasting and disaster prevention. Previous approaches to this problem include classical super-resolution (SR) algorithms such as iterative back-projection (IBP) and a recent nonlocal self-similarity sparse representation (NSSR) that exploits the data redundancy of radar echo data, etc. However, since radar echoes tend to have rich edge information and contour textures, the textural detail in the reconstructed echoes of traditional approaches is typically absent. Inspired by the recent advances of faster and deeper neural networks, especially the generative adversarial networks (GAN), which are capable of pushing SR solutions to the natural image manifold, we propose using GAN to tackle the problem of weather radar echo super-resolution to achieve better reconstruction performance (measured in peak signal-to-noise ratio (PSNR) and structural similarity index (SSIM)). Using authentic weather radar echo data, we present the experimental results and compare its reconstruction performance with the above-mentioned methods. The experimental results showed that the GAN-based method is capable of generating perceptually superior solutions while achieving higher PSNR/SSIM results.https://www.mdpi.com/2073-4433/10/9/555weather radarimage super-resolutiongenerative adversarial networksdeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Hongguang Chen
Xing Zhang
Yintian Liu
Qiangyu Zeng
spellingShingle Hongguang Chen
Xing Zhang
Yintian Liu
Qiangyu Zeng
Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images
Atmosphere
weather radar
image super-resolution
generative adversarial networks
deep learning
author_facet Hongguang Chen
Xing Zhang
Yintian Liu
Qiangyu Zeng
author_sort Hongguang Chen
title Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images
title_short Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images
title_full Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images
title_fullStr Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images
title_full_unstemmed Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images
title_sort generative adversarial networks capabilities for super-resolution reconstruction of weather radar echo images
publisher MDPI AG
series Atmosphere
issn 2073-4433
publishDate 2019-09-01
description <b> </b>Improving the resolution of degraded radar echo images of weather radar systems can aid severe weather forecasting and disaster prevention. Previous approaches to this problem include classical super-resolution (SR) algorithms such as iterative back-projection (IBP) and a recent nonlocal self-similarity sparse representation (NSSR) that exploits the data redundancy of radar echo data, etc. However, since radar echoes tend to have rich edge information and contour textures, the textural detail in the reconstructed echoes of traditional approaches is typically absent. Inspired by the recent advances of faster and deeper neural networks, especially the generative adversarial networks (GAN), which are capable of pushing SR solutions to the natural image manifold, we propose using GAN to tackle the problem of weather radar echo super-resolution to achieve better reconstruction performance (measured in peak signal-to-noise ratio (PSNR) and structural similarity index (SSIM)). Using authentic weather radar echo data, we present the experimental results and compare its reconstruction performance with the above-mentioned methods. The experimental results showed that the GAN-based method is capable of generating perceptually superior solutions while achieving higher PSNR/SSIM results.
topic weather radar
image super-resolution
generative adversarial networks
deep learning
url https://www.mdpi.com/2073-4433/10/9/555
work_keys_str_mv AT hongguangchen generativeadversarialnetworkscapabilitiesforsuperresolutionreconstructionofweatherradarechoimages
AT xingzhang generativeadversarialnetworkscapabilitiesforsuperresolutionreconstructionofweatherradarechoimages
AT yintianliu generativeadversarialnetworkscapabilitiesforsuperresolutionreconstructionofweatherradarechoimages
AT qiangyuzeng generativeadversarialnetworkscapabilitiesforsuperresolutionreconstructionofweatherradarechoimages
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