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A Comparison between Wasserstein Distance and a Distance Induced by Fisher-Rao Metric in Complex Shapes Clustering

机译:复杂形状聚类中Wasserstein距离与Fisher-Rao度量引起的距离的比较

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Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head in the space. The applications range from structural biology, computer vision, medical imaging to archaeology. We focus on the selection of an appropriate measurement of distance among observations with the aim of obtaining an unsupervised classification of shapes. Data from a shape are often realized as a set of representative points, called landmarks. For planar shapes, we assume that each landmark is modeled via a bivariate Gaussian, where the means capture uncertainties that arise in landmarks placement and the variances the natural variability across the population of shapes. At first we consider the Fisher-Rao metric as a Riemannian metric on the Statistical Manifold of the Gaussian distributions. The induced geodesic-distance is related with the minimization of information in the Fisher sense and we can use it to discriminate shapes. Another suitable distance is the Wasserstein distance, which is induced by a Riemannian metric and is related with the minimal transportation cost. In this work, a simulation study is conducted in order to make a comparison between Wasserstein and Fisher-Rao metrics when used in shapes clustering.
机译:形状分析研究几何对象,例如平面中的扁平鱼或空间中的人头。应用范围从结构生物学,计算机视觉,医学成像到考古学。我们专注于选择观测值之间适当的距离度量,以期获得形状的无监督分类。来自形状的数据通常被实现为一组代表点,称为地标。对于平面形状,我们假设每个地标都是通过双变量高斯模型建模的,其中均值捕获了地标放置中出现的不确定性,并且在整个形状总体中均具有自然变异性的方差。首先,我们将Fisher-Rao度量视为高斯分布统计流形上的黎曼度量。在费舍尔意义上,诱发的测地距离与信息的最小化有关,我们可以使用它来区分形状。另一个合适的距离是Wasserstein距离,它是由黎曼度量得出的,并且与最小的运输成本有关。在这项工作中,进行了仿真研究,以便在形状聚类中比较Wasserstein指标和Fisher-Rao指标时进行比较。

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