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On the Geodesic Distance in Shapes K-means Clustering

机译:在形状k-means聚类的流程距离上

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摘要

In this paper, the problem of clustering rotationally invariant shapes is studied and a solution using Information Geometry tools is provided. Landmarks of a complex shape are defined as probability densities in a statistical manifold. Then, in the setting of shapes clustering through a K-means algorithm, the discriminative power of two different shapes distances are evaluated. The first, derived from Fisher–Rao metric, is related with the minimization of information in the Fisher sense and the other is derived from the Wasserstein distance which measures the minimal transportation cost. A modification of the K-means algorithm is also proposed which allows the variances to vary not only among the landmarks but also among the clusters.
机译:在本文中,研究了聚类旋转不变形状的问题,并提供了使用信息几何工具的解决方案。复杂形状的地标被定义为统计歧管中的概率密度。然后,在通过K-means算法的形状聚类的设置中,评估两个不同形状距离的辨别力。源自Fisher-Rao度量的第一个与Fisher感官中的信息的最小化有关,另一个是源自瓦尔斯坦距离,测量最小的运输成本。还提出了k-means算法的修改,其允许方差不仅在地标中不等而且在群集中变化。

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