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Adaptive multi-scale segmentation of surface data using unsupervised learning of seed positions

机译:使用种子位置的无监督学习进行表面数据的自适应多尺度分割

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摘要

This paper presents a method for multi-scale segmentation of surface data using scale-adaptive region growing. The proposed segmentation algorithm is initiated by an unsupervised learning of optimal seed positions through the surface attribute clustering with a two-criterion score function. The seeds are selected as consecutive local maxima of the clustering map, which is computed by an aggregation of the local isotropic contrast and local variance maps. The proposed method avoids typical segmentation errors caused by an inappropriate choice of seed points and thresholds used in the region-growing algorithm. The scale-adaptive threshold estimate is based on the image local statistics in the neighborhoods of seed points. The performance of this method was evaluated on LiDAR surface images.
机译:本文提出了一种利用尺度自适应区域增长技术对表面数据进行多尺度分割的方法。所提出的分割算法是通过具有两个准则得分函数的表面属性聚类,通过无监督学习最佳种子位置而启动的。种子被选为聚类图的连续局部最大值,这是通过局部各向同性对比图和局部方差图的汇总来计算的。所提出的方法避免了由于区域增长算法中种子点和阈值选择不当而引起的典型分割错误。比例尺自适应阈值估计基于种子点附近的图像局部统计量。在LiDAR表面图像上评估了该方法的性能。

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