Automated road breaching to enhance extraction of natural drainage networks from elevation models through deep learning
Links
- More information: Publisher Index Page (via DOI)
- Download citation as: RIS | Dublin Core
Abstract
High-resolution (HR) digital elevation models (DEMs), such as those at resolutions of 1 and 3 meters, have increasingly become more widely available, along with lidar point cloud data. In a natural environment, a detailed surface water drainage network can be extracted from a HR DEM using flow-direction and flow-accumulation modeling. However, elevation details captured in HR DEMs, such as roads and overpasses, can form barriers that incorrectly alter flow accumulation models, and hinder the extraction of accurate surface water drainage networks. This study tests a deep learning approach to identify the intersections of roads and stream valleys, whereby valley channels can be burned through road embankments in a HR DEM for subsequent flow accumulation modeling, and proper natural drainage network extraction.
Publication type | Conference Paper |
---|---|
Publication Subtype | Conference Paper |
Title | Automated road breaching to enhance extraction of natural drainage networks from elevation models through deep learning |
DOI | 10.5194/isprs-archives-XLII-4-597-2018 |
Volume | XLII-4 |
Year Published | 2018 |
Language | English |
Publisher | International Society for Photogrammetry and Remote Sensing |
Contributing office(s) | Center for Geospatial Information Science (CEGIS) |
Description | 5 p. |
Larger Work Type | Book |
Larger Work Subtype | Conference publication |
Larger Work Title | The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
First page | 597 |
Last page | 601 |
Google Analytic Metrics | Metrics page |