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Figure: Sounding label distributions of generalization approaches: A) fixed radius, Charleston Harbor; B) variable radius, Narragansett Bay; C) grid-based, Tampa Bay; and D) label-based, Strait of Juan de Fuca.
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This work presents a bathymetric data generalization algorithm based on depth labels rendered at scale. It aims to facilitate the final cartographic sounding selection for chart portrayal through the process referred to as hydrographic sounding selection. Currently, automated algorithms for hydrographic soundings selection rely on radius-and grid-b...
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