SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW

A comprehensive review of 32 studies (20 journals, 11 proceedings, and one book chapter) published from 2016 to 2023 in the fields of deep learning (DL), image enhancement, super-resolution image, and Geographic Information System (GIS) is presented, focusing on the integration of DL methodologies w...

Full description

Saved in:
Bibliographic Details
Main Authors: Dalia A. Hussein, Mohamed A. Yousef, Hassan A. Abdel-Hak, Yasser G. Mostafa
Format: Article
Language:English
Published: University of Zagreb 2025-01-01
Series:Rudarsko-geološko-naftni Zbornik
Subjects:
Online Access:https://hrcak.srce.hr/file/482036
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849320125616881664
author Dalia A. Hussein
Mohamed A. Yousef
Hassan A. Abdel-Hak
Yasser G. Mostafa
author_facet Dalia A. Hussein
Mohamed A. Yousef
Hassan A. Abdel-Hak
Yasser G. Mostafa
author_sort Dalia A. Hussein
collection DOAJ
description A comprehensive review of 32 studies (20 journals, 11 proceedings, and one book chapter) published from 2016 to 2023 in the fields of deep learning (DL), image enhancement, super-resolution image, and Geographic Information System (GIS) is presented, focusing on the integration of DL methodologies with GIS to improve the quality of satellite images. The review summarizes the background, principles, enhancement quality, speed, and advantages of these technologies, comparing their performance based on metrics such as Peak Signal-to-Noise Ratio (PSNR), Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Structural Similarity Index Measure (SSIM), and computation time. Satellite remote sensing technologies, which have provided an efficient means of gathering spatial information since the launch of Landsat 1 by NASA in 1972, have recently advanced to enable the collection of high-resolution satellite (HRS) images (≤30 cm). However, factors such as atmospheric interference, shadowing, and underutilization of sensor capacity often degrade image quality. To address this, satellite images require enhancement, and DL has emerged as a powerful tool due to its ability to model complex relationships and accurately recover super-resolution images. While DL and neural networks have demonstrated significant success in natural image enhancement, their application to satellite images presents unique challenges. These challenges include insufficient consideration of the distinct characteristics of satellite imagery, such as varying spatial resolutions, sensor noise, and spectral diversity, as well as the reliance on modelling assumptions that may not align with the complexities of satellite data. This highlights the need for further investigation into advanced DL approaches tailored specifically for this domain.
format Article
id doaj-art-58dc993f997d4d09a7fe6b16ab644a75
institution Kabale University
issn 0353-4529
1849-0409
language English
publishDate 2025-01-01
publisher University of Zagreb
record_format Article
series Rudarsko-geološko-naftni Zbornik
spelling doaj-art-58dc993f997d4d09a7fe6b16ab644a752025-08-20T03:50:12ZengUniversity of ZagrebRudarsko-geološko-naftni Zbornik0353-45291849-04092025-01-014039511810.17794/rgn.2025.3.8SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEWDalia A. Hussein0Mohamed A. Yousef1Hassan A. Abdel-Hak2Yasser G. Mostafa3Faculty of Engineering, University of Assiut, Egypt.Faculty of Engineering, University of Assiut, Egypt.Faculty of Engineering, University of Assiut, Egypt.Faculty of Engineering, University of Sohag, EgyptA comprehensive review of 32 studies (20 journals, 11 proceedings, and one book chapter) published from 2016 to 2023 in the fields of deep learning (DL), image enhancement, super-resolution image, and Geographic Information System (GIS) is presented, focusing on the integration of DL methodologies with GIS to improve the quality of satellite images. The review summarizes the background, principles, enhancement quality, speed, and advantages of these technologies, comparing their performance based on metrics such as Peak Signal-to-Noise Ratio (PSNR), Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Structural Similarity Index Measure (SSIM), and computation time. Satellite remote sensing technologies, which have provided an efficient means of gathering spatial information since the launch of Landsat 1 by NASA in 1972, have recently advanced to enable the collection of high-resolution satellite (HRS) images (≤30 cm). However, factors such as atmospheric interference, shadowing, and underutilization of sensor capacity often degrade image quality. To address this, satellite images require enhancement, and DL has emerged as a powerful tool due to its ability to model complex relationships and accurately recover super-resolution images. While DL and neural networks have demonstrated significant success in natural image enhancement, their application to satellite images presents unique challenges. These challenges include insufficient consideration of the distinct characteristics of satellite imagery, such as varying spatial resolutions, sensor noise, and spectral diversity, as well as the reliance on modelling assumptions that may not align with the complexities of satellite data. This highlights the need for further investigation into advanced DL approaches tailored specifically for this domain.https://hrcak.srce.hr/file/482036deep learningGISneural networkssatellite imagesimage enhancementsuper resolution
spellingShingle Dalia A. Hussein
Mohamed A. Yousef
Hassan A. Abdel-Hak
Yasser G. Mostafa
SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW
Rudarsko-geološko-naftni Zbornik
deep learning
GIS
neural networks
satellite images
image enhancement
super resolution
title SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW
title_full SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW
title_fullStr SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW
title_full_unstemmed SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW
title_short SATELLITE IMAGE ENHANCEMENT USING DEEP LEARNING AND GIS INTEGRATION: A COMPREHENSIVE REVIEW
title_sort satellite image enhancement using deep learning and gis integration a comprehensive review
topic deep learning
GIS
neural networks
satellite images
image enhancement
super resolution
url https://hrcak.srce.hr/file/482036
work_keys_str_mv AT daliaahussein satelliteimageenhancementusingdeeplearningandgisintegrationacomprehensivereview
AT mohamedayousef satelliteimageenhancementusingdeeplearningandgisintegrationacomprehensivereview
AT hassanaabdelhak satelliteimageenhancementusingdeeplearningandgisintegrationacomprehensivereview
AT yassergmostafa satelliteimageenhancementusingdeeplearningandgisintegrationacomprehensivereview