ABSTRACTPolyline simplification is crucial for cartography and spatial database management. In recent decades, various rule-based algorithms for vector polyline simplification have been proposed. However, most existing algorithms lack parameter self-adaptive capabilities and require repeated manual parameter adjustments when applied to different polylines. While deep-learning-based methods have recently been introduced for raster polyline image simplification, they cannot achieve end-to-end simplification when the input data and output results are vector polylines. This paper proposes a new deep-learning-based method for vector polyline simplification by integrating both the vector and raster features of the polyline. Specifically, a deep s...
Many map features, such as administrative borders, coastlines, roads or rivers, are conventionally r...
The main subject of spatial joins are polygons and polylines. The processing of spatial joins can be...
Artificial neural networks excel at analysing and transforming images and other raster fields. We ap...
Polyline simplification is a technique that reduces the number of vertices of a polygonal chain for ...
Displaying polygonal vector data is essential in various application scenarios such as geometry visu...
We study the problem of morphing between two polylines that represent a geographical feature general...
Line simplification is an important component of map generalization. In recent years, algorithms for...
Line simplification is an important method in the context of cartographic generalization, which is h...
This paper presents a new approach and procedure for directly processing vector-based data sets to ...
In this article, we study automated simplification and schematization of territorial outlines. We pr...
A computer application designed to generalize linear elements in a vector formatted cartographic set...
International audienceMaps have been a unique source of knowledge for centuries. Such historical doc...
Raster clip-art images, which consist of distinctly colored regions separated by sharp boundaries ty...
We study the problem of morphing between two polylines that represent linear geographical features l...
We study the problem of morphing between two polylines that represent linear geographical features l...
Many map features, such as administrative borders, coastlines, roads or rivers, are conventionally r...
The main subject of spatial joins are polygons and polylines. The processing of spatial joins can be...
Artificial neural networks excel at analysing and transforming images and other raster fields. We ap...
Polyline simplification is a technique that reduces the number of vertices of a polygonal chain for ...
Displaying polygonal vector data is essential in various application scenarios such as geometry visu...
We study the problem of morphing between two polylines that represent a geographical feature general...
Line simplification is an important component of map generalization. In recent years, algorithms for...
Line simplification is an important method in the context of cartographic generalization, which is h...
This paper presents a new approach and procedure for directly processing vector-based data sets to ...
In this article, we study automated simplification and schematization of territorial outlines. We pr...
A computer application designed to generalize linear elements in a vector formatted cartographic set...
International audienceMaps have been a unique source of knowledge for centuries. Such historical doc...
Raster clip-art images, which consist of distinctly colored regions separated by sharp boundaries ty...
We study the problem of morphing between two polylines that represent linear geographical features l...
We study the problem of morphing between two polylines that represent linear geographical features l...
Many map features, such as administrative borders, coastlines, roads or rivers, are conventionally r...
The main subject of spatial joins are polygons and polylines. The processing of spatial joins can be...
Artificial neural networks excel at analysing and transforming images and other raster fields. We ap...