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DEM super-resolution framework based on deep learning: decomposing terrain trends and residuals

Hongen Wang, Liyang Xiong, Guanghui Hu, Haoyu Cao, Sijin Li, Guoan Tang, Lei Zhou

2024International Journal of Digital Earth17 citationsDOIOpen Access PDF

Abstract

Deep learning-based super-resolution is an essential technique for acquiring high-resolution digital elevation models (DEMs) by enhancing the spatial resolution of low-resolution DEMs. However, current deep learning-based approaches for DEM super-resolution lack comprehensiveness in terrain information reconstruction, resulting in the need to strengthen the rationality of terrain representation. Furthermore, the limited adaptability and extension potential of these approaches restrict their practical applicability and scope, hindering further advancement. As a solution, we introduce a broadly scalable detrending-based deep learning (DTDL) spatially explicit framework for DEM super-resolution. The framework aims to improve DEM reconstruction through data processing and augmentation. It employs detrending to distinguish between large-scale terrain trends and small-scale residuals in DEMs, thereby enhancing the neural network's capacity to learn terrain information. We integrate DTDL with classical super-resolution methods (SRCNN, EDSR, and SRGAN) and conduct experiments in the Alps, Himalayas, and Rockies. The experimental results indicate that the fusion of DTDL with deep learning-based methods enhances the accuracy of terrain reconstruction and the rationality of terrain feature representation, demonstrating strong compatibility and robustness.

Topics & Concepts

TerrainGeographyCartographyArtificial intelligenceRemote sensingComputer scienceGeologyAdvanced Image Processing TechniquesImage and Signal Denoising MethodsAdvanced Image Fusion Techniques
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