On the geodesic distance in shapes K-means clustering

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Abstract

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.

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Gattone, S. A., De Sanctis, A., Puechmorel, S., & Nicol, F. (2018). On the geodesic distance in shapes K-means clustering. Entropy, 20(9). https://doi.org/10.3390/e20090647

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