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Level Sets and Voronoi based Feature Extraction from any Imagery

机译:任何图像的级别集和Voronoi的特征提取

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摘要

Polygon features are of interest in many GEOProcessing applications like shoreline mapping, boundary delineation, change detection, etc. This paper presents a unique new GPU-based methodology to automate feature extraction combining level sets, or mean shift based segmentation together with Voronoi skeletonization, that guarantees the extracted features to be topologically correct. The features thus extracted as object centerlines can be stored as vector maps in a Geographic Information System after labeling and editing. We show application examples on different sources: paper maps, digital satellite imagery, and 2D/3D acoustic images (from hydrographic surveys). The application involving satellite imagery shown in this paper is coastline detection, but the methodology can be easily applied to feature extraction on any king of imagery. A prototype application that is developed as part of this research work.
机译:多边形特征在许多地理处理应用中,如海岸线映射,边界描绘,变化检测等。本文提出了一种独特的基于GPU的方法,可以自动化特征提取组合级别集,或与Voronoi骨架化一起的平均转变分段,即保证提取的功能在拓扑上正确。如此提取为对象中心线的特征可以在标记和编辑后在地理信息系统中存储为矢量映射。我们在不同来源上显示应用示例:纸张地图,数字卫星图像和2D / 3D声学图像(来自水文调查)。涉及本文所示的卫星图像的应用是海岸线检测,但方法可以很容易地应用于任何图像之王的特征提取。作为本研究工作的一部分开发的原型应用程序。

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