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News/ImplicitTerrainV2: Wavelet-Guided Spatially Adaptive Neural Terrain Representation
arxiv
PublishedMay 22, 2026 at 4:00 AM
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ImplicitTerrainV2: Wavelet-Guided Spatially Adaptive Neural Terrain Representation

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arXiv:2605.22556v1 Announce Type: new Abstract: Digital elevation models (DEMs) underpin terrain analysis in Geographic Information Systems (GIS), but in their common raster form, they rely on interpolation for off-grid sampling and finite-difference operators for derivative-based analysis. Implicit

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