An attention U-Net model for detection of fine-scale hydrologic streamlines

Environmental Modelling & Software
By: , and 

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Abstract

Surface water is an irreplaceable resource for human survival and environmental sustainability. Accurate, finely detailed cartographic representations of hydrologic streamlines are critically important in various scientific domains, such as assessing the quantity and quality of present and future water resources, modeling climate changes, evaluating agricultural suitability, mapping flood inundation, and monitoring environmental changes. Conventional approaches to detecting such streamlines cannot adequately incorporate information from the complex three-dimensional (3D) environment of streams and land surface features. Such information is vital to accurately delineate streamlines. In recent years, high accuracy lidar data has become increasingly available for deriving both 3D information and terrestrial surface reflectance. This study develops an attention U-net model to take advantage of high-accuracy lidar data for finely detailed streamline detection and evaluates model results against a baseline of multiple traditional machine learning methods. The evaluation shows that the attention U-net model outperforms the best baseline machine learning method by an average F1 score of 11.25% and achieves significantly better smoothness and connectivity between classified streamline channels. These findings suggest that our deep learning approach can harness high-accuracy lidar data for fine-scale hydrologic streamline detection, and in turn produce desirable benefits for many scientific domains.

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Publication type Article
Publication Subtype Journal Article
Title An attention U-Net model for detection of fine-scale hydrologic streamlines
Series title Environmental Modelling & Software
DOI 10.1016/j.envsoft.2021.104992
Volume 140
Year Published 2021
Language English
Publisher Elsevier
Contributing office(s) Center for Geospatial Information Science (CEGIS)
Description 104992, 18 p.
Country United States
State North Carolina
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