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Effective clustering and boundary detection algorithm based on Delaunay triangulation

机译:基于Delaunay三角剖分的有效聚类和边界检测算法

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摘要

In this paper, a new spatial clustering algorithm TRICLUST based on Delaunay triangulation is proposed. This algorithm treats clustering task by analyzing statistical features of data. For each data point, its values of statistical features are extracted from its neighborhood which effectively models the data proximity. By applying specifically built criteria function, TRICLUST is able to effectively handle data set with clusters of complex shapes and non-uniform densities, and with large amount of noises. One additional advantage of TRICLUST is the boundary detection function which is valuable for many real world applications such as geo-spatial data processing, point-based computer graphics, etc.
机译:提出了一种新的基于Delaunay三角剖分的空间聚类算法TRICLUST。该算法通过分析数据的统计特征来处理聚类任务。对于每个数据点,从其邻域中提取其统计特征值,从而有效地对数据接近度进行建模。通过应用专门构建的标准功能,TRICLUST能够有效地处理形状复杂,密度不均匀的簇以及大量噪声的数据集。 TRICLUST的另一项优势是边界检测功能,对于许多实际应用(例如地理空间数据处理,基于点的计算机图形等)而言,这是非常有价值的。

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