Deep learning for processing and analysis of remote sensing big data: a technical review

In recent years, the rapid development of Earth observation technology has produced an increasing growth in remote sensing big data, posing serious challenges for effective and efficient processing and analysis. Meanwhile, there has been a massive rise in deep-learning-based algorithms for remote se...

Full description

Bibliographic Details
Main Authors: Xin Zhang, Ya’nan Zhou, Jiancheng Luo
Format: Article
Language:English
Published: Taylor & Francis Group 2021-09-01
Series:Big Earth Data
Subjects:
Online Access:http://dx.doi.org/10.1080/20964471.2021.1964879
id doaj-e0e6fc8d2db34a2d94cf893d43f6e1e6
record_format Article
spelling doaj-e0e6fc8d2db34a2d94cf893d43f6e1e62021-09-20T13:17:21ZengTaylor & Francis GroupBig Earth Data2096-44712574-54172021-09-010013410.1080/20964471.2021.19648791964879Deep learning for processing and analysis of remote sensing big data: a technical reviewXin Zhang0Ya’nan Zhou1Jiancheng Luo2Aerospace Information Research Institute, Chinese Academy of SciencesHohai UniversityAerospace Information Research Institute, Chinese Academy of SciencesIn recent years, the rapid development of Earth observation technology has produced an increasing growth in remote sensing big data, posing serious challenges for effective and efficient processing and analysis. Meanwhile, there has been a massive rise in deep-learning-based algorithms for remote sensing tasks, providing a large opportunity for remote sensing big data. In this article, we initially summarize the features of remote sensing big data. Subsequently, following the pipeline of remote sensing tasks, a detailed and technical review is conducted to discuss how deep learning has been applied to the processing and analysis of remote sensing data, including geometric and radiometric processing, cloud masking, data fusion, object detection and extraction, land-use/cover classification, change detection and multitemporal analysis. Finally, we discussed technical challenges and concluded directions for future research in deep-learning-based applications for remote sensing big data.http://dx.doi.org/10.1080/20964471.2021.1964879remote sensingbig datadeep learningtechnical review
collection DOAJ
language English
format Article
sources DOAJ
author Xin Zhang
Ya’nan Zhou
Jiancheng Luo
spellingShingle Xin Zhang
Ya’nan Zhou
Jiancheng Luo
Deep learning for processing and analysis of remote sensing big data: a technical review
Big Earth Data
remote sensing
big data
deep learning
technical review
author_facet Xin Zhang
Ya’nan Zhou
Jiancheng Luo
author_sort Xin Zhang
title Deep learning for processing and analysis of remote sensing big data: a technical review
title_short Deep learning for processing and analysis of remote sensing big data: a technical review
title_full Deep learning for processing and analysis of remote sensing big data: a technical review
title_fullStr Deep learning for processing and analysis of remote sensing big data: a technical review
title_full_unstemmed Deep learning for processing and analysis of remote sensing big data: a technical review
title_sort deep learning for processing and analysis of remote sensing big data: a technical review
publisher Taylor & Francis Group
series Big Earth Data
issn 2096-4471
2574-5417
publishDate 2021-09-01
description In recent years, the rapid development of Earth observation technology has produced an increasing growth in remote sensing big data, posing serious challenges for effective and efficient processing and analysis. Meanwhile, there has been a massive rise in deep-learning-based algorithms for remote sensing tasks, providing a large opportunity for remote sensing big data. In this article, we initially summarize the features of remote sensing big data. Subsequently, following the pipeline of remote sensing tasks, a detailed and technical review is conducted to discuss how deep learning has been applied to the processing and analysis of remote sensing data, including geometric and radiometric processing, cloud masking, data fusion, object detection and extraction, land-use/cover classification, change detection and multitemporal analysis. Finally, we discussed technical challenges and concluded directions for future research in deep-learning-based applications for remote sensing big data.
topic remote sensing
big data
deep learning
technical review
url http://dx.doi.org/10.1080/20964471.2021.1964879
work_keys_str_mv AT xinzhang deeplearningforprocessingandanalysisofremotesensingbigdataatechnicalreview
AT yananzhou deeplearningforprocessingandanalysisofremotesensingbigdataatechnicalreview
AT jianchengluo deeplearningforprocessingandanalysisofremotesensingbigdataatechnicalreview
_version_ 1717374286717517824