Digital Elevation Model Estimation from RGB Satellite Imagery using Generative Deep Learning
Alif Ilham Madani, Riska A. Kuswati, Alex M. Lechner, Muhamad Risqi U. Saputra

TL;DR
This paper presents a deep learning approach using conditional GANs to generate digital elevation models from freely available RGB satellite images, offering a cost-effective alternative to traditional methods.
Contribution
It introduces a novel pipeline for DEM generation from RGB satellite imagery using a large, curated dataset and a two-stage training process with fine-tuning for improved accuracy.
Findings
Achieved RMSE of 0.4671 in mountainous regions.
Demonstrated promising results with SSIM score of 0.2065.
Highlighted limitations in lowland and residential areas.
Abstract
Digital Elevation Models (DEMs) are vital datasets for geospatial applications such as hydrological modeling and environmental monitoring. However, conventional methods to generate DEM, such as using LiDAR and photogrammetry, require specific types of data that are often inaccessible in resource-constrained settings. To alleviate this problem, this study proposes an approach to generate DEM from freely available RGB satellite imagery using generative deep learning, particularly based on a conditional Generative Adversarial Network (GAN). We first developed a global dataset consisting of 12K RGB-DEM pairs using Landsat satellite imagery and NASA's SRTM digital elevation data, both from the year 2000. A unique preprocessing pipeline was implemented to select high-quality, cloud-free regions and aggregate normalized RGB composites from Landsat imagery. Additionally, the model was trained…
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Taxonomy
TopicsSoil Geostatistics and Mapping · Synthetic Aperture Radar (SAR) Applications and Techniques · Hydrology and Watershed Management Studies
