Zhen Hao
DeepWaterFraction: A globally applicable, self-training deep learning approach for percent surface water area estimation from Landsat mission imagery
Hao, Zhen; Foody, Giles; Ge, Yong; Cai, Xiaobin; Du, Yun; Ling, Feng
Authors
Professor GILES FOODY giles.foody@nottingham.ac.uk
PROFESSOR OF GEOGRAPHICAL INFORMATION
Yong Ge
Xiaobin Cai
Yun Du
Feng Ling
Abstract
Surface water area estimation is essential for understanding global environmental dynamics, yet it presents significant challenges, particularly when dealing with small water bodies like ponds and narrow width rivers. Surface water areas for these small bodies are often inaccurately represented by existing methods due to the spatial resolution limitations in commonly used remote sensing images. This study introduces DeepWaterFraction (DWF), a deep learning approach, to estimate percent surface water area from Landsat mission imagery. DWF is trained with a self-training method, which creates training data by upscaling remote sensing images and water map labels to a lower resolution, enabling the creation of a large-scale, global coverage training dataset. DWF demonstrates superior accuracy in estimating areas for small water bodies compared to several existing methods for surface water area estimation, with a pixel-wise root mean squared error of 14.3 %. Specifically, it reduces error rates by 54.3 % for water bodies with a minimum area of 0.001 km2 and by 22.6 % for those with a minimum area of 0.01 km2. DWF's application in global river discharge inversion is also explored, showcasing its capability to capture width variations in narrow rivers (<90 m) better than existing methods, and its robustness across environments including wetland, tree covers, and urban areas. Even for wider rivers (>150 m), DWF's performance remains superior, as its ability to accurately quantify mixed water pixel areas effectively reflects discharge variations when the variation area is small. We find that self-training is an effective strategy for generating extensive global training datasets for water mapping, with a high upscaling factor being critical for ensuring label accuracy. This study presents a step forward in the accurate global mapping of water resources.
Citation
Hao, Z., Foody, G., Ge, Y., Cai, X., Du, Y., & Ling, F. (2024). DeepWaterFraction: A globally applicable, self-training deep learning approach for percent surface water area estimation from Landsat mission imagery. Journal of Hydrology, 638, Article 131512. https://doi.org/10.1016/j.jhydrol.2024.131512
Journal Article Type | Article |
---|---|
Acceptance Date | Apr 6, 2024 |
Online Publication Date | Jun 14, 2024 |
Publication Date | 2024-07 |
Deposit Date | Jun 25, 2024 |
Publicly Available Date | Jun 15, 2025 |
Journal | Journal of Hydrology |
Print ISSN | 0022-1694 |
Electronic ISSN | 1879-2707 |
Publisher | Elsevier |
Peer Reviewed | Peer Reviewed |
Volume | 638 |
Article Number | 131512 |
DOI | https://doi.org/10.1016/j.jhydrol.2024.131512 |
Keywords | Surface Water Area Estimation, Landsat Mission Imagery, Small Water Bodies Monitoring, River Discharge Inversion, DeepWaterFraction (DWF) |
Public URL | https://nottingham-repository.worktribe.com/output/36306942 |
Files
This file is under embargo until Jun 15, 2025 due to copyright restrictions.
You might also like
Spatial–Temporal Analysis of Greenness and Its Relationship with Poverty in China
(2024)
Journal Article
Under the mantra: 'Make use of colorblind friendly graphs'
(2024)
Journal Article
Downloadable Citations
About Repository@Nottingham
Administrator e-mail: discovery-access-systems@nottingham.ac.uk
This application uses the following open-source libraries:
SheetJS Community Edition
Apache License Version 2.0 (http://www.apache.org/licenses/)
PDF.js
Apache License Version 2.0 (http://www.apache.org/licenses/)
Font Awesome
SIL OFL 1.1 (http://scripts.sil.org/OFL)
MIT License (http://opensource.org/licenses/mit-license.html)
CC BY 3.0 ( http://creativecommons.org/licenses/by/3.0/)
Powered by Worktribe © 2025
Advanced Search