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A Fast Algorithm to Estimate the Deepest Points of Lakes for Regional Lake Registration

机译:估算湖泊最深点以进行区域湖泊注册的快速算法

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摘要

When conducting image registration in the U.S. state of Alaska, it is very difficult to locate satisfactory ground control points because ice, snow, and lakes cover much of the ground. However, GCPs can be located by seeking stable points from the extracted lake data. This paper defines a process to estimate the deepest points of lakes as the most stable ground control points for registration. We estimate the deepest point of a lake by computing the center point of the largest inner circle (LIC) of the polygon representing the lake. An LIC-seeking method based on Voronoi diagrams is proposed, and an algorithm based on medial axis simplification (MAS) is introduced. The proposed design also incorporates parallel data computing. A key issue of selecting a policy for partitioning vector data is carefully studied, the selected policy that equalize the algorithm complexity is proved the most optimized policy for vector parallel processing. Using several experimental applications, we conclude that the presented approach accurately estimates the deepest points in Alaskan lakes; furthermore, we gain perfect efficiency using MAS and a policy of algorithm complexity equalization.
机译:在美国阿拉斯加州进行图像配准时,很难找到令人满意的地面控制点,因为冰,雪和湖泊覆盖了大部分地面。但是,可以通过从提取的湖泊数据中寻找稳定点来定位GCP。本文定义了一个过程,将湖泊的最深点估计为最稳定的地面控制点进行注册。我们通过计算代表湖泊的多边形的最大内圆(LIC)的中心点来估计湖泊的最深点。提出了一种基于Voronoi图的LIC搜索方法,并提出了一种基于中间轴简化算法的算法。提议的设计还包含并行数据计算。仔细研究了选择矢量数据分割策略的关键问题,证明了选择算法能够使算法复杂度均等,是向量并行处理最优化的策略。使用几个实验应用程序,我们得出结论,提出的方法可以准确估计阿拉斯加湖泊中的最深点。此外,我们使用MAS和算法复杂度均衡策略获得了完美的效率。

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