Variational Multilevel Mesh Clustering

Iurie Chiosa, A. Kolb
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引用次数: 6

Abstract

In this paper a novel clustering algorithm is proposed, namely Variational Multilevel Mesh Clustering (VMLC). The algorithm incorporates the advantages of both hierarchical and variational (Lloyd) algorithms, i.e. the initial number of seeds is not predefined and on each level the obtained clustering configuration is quasi-optimal. The algorithm performs a complete mesh analysis regarding the underlying energy functional. Thus, an optimized multilevel clustering is built. The first benefit of this approach is that it resolves the inherent problems of variational algorithms, for which the result and the convergence is strictly related to the initial number and selection of seeds. On the other hand, the greedy nature of hierarchical approaches, i.e. the non-optimal shape of the clusters in the hierarchy, is solved. We present an optimized implementation based on an incremental data structure. We demonstrate the generic nature of our approach by applying it for the generation of optimized multilevel Centroidal Voronoi Diagrams and planar mesh approximation.
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变分多级网格聚类
本文提出了一种新的聚类算法,即变分多级网格聚类(VMLC)。该算法结合了分层和变分(Lloyd)算法的优点,即种子的初始数量不是预定义的,并且在每一层上获得的聚类配置都是准最优的。该算法对底层能量泛函进行了完整的网格分析。因此,构建了一个优化的多级聚类。该方法的第一个优点是解决了变分算法的固有问题,其结果和收敛性与种子的初始数量和选择严格相关。另一方面,解决了层次方法的贪婪性,即层次中聚类的非最优形状。我们提出了一种基于增量数据结构的优化实现。我们通过将其应用于生成优化的多层质心Voronoi图和平面网格近似来证明我们方法的通用性。
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