Digital elevation model correction in urban areas using extreme gradient boosting, land cover and terrain parameters
Chukwuma Okolie, Jon Mills, Adedayo Adeleke, Julian Smit

TL;DR
This study employs XGBoost to correct urban digital elevation models, significantly improving their accuracy by leveraging terrain and land cover data, thereby enhancing hydrological modeling in urban environments.
Contribution
The paper introduces a novel application of XGBoost for DEM correction in urban areas, demonstrating substantial accuracy improvements over existing models.
Findings
RMSE of Copernicus DEM improved by 46-53%
RMSE of AW3D DEM improved by 72-73%
Significant accuracy gains comparable to other methods
Abstract
The accuracy of digital elevation models (DEMs) in urban areas is influenced by numerous factors including land cover and terrain irregularities. Moreover, building artifacts in global DEMs cause artificial blocking of surface flow pathways. This compromises their quality and adequacy for hydrological and environmental modelling in urban landscapes where precise and accurate terrain information is needed. In this study, the extreme gradient boosting (XGBoost) ensemble algorithm is adopted for enhancing the accuracy of two medium-resolution 30m DEMs over Cape Town, South Africa: Copernicus GLO-30 and ALOS World 3D (AW3D). XGBoost is a scalable, portable and versatile gradient boosting library that can solve many environmental modelling problems. The training datasets are comprised of eleven predictor variables including elevation, urban footprints, slope, aspect, surface roughness,…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Soil erosion and sediment transport
MethodsLib
