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Self Functional Maps

机译:自我功能图

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摘要

A classical approach for surface classification is to find a compact algebraic representation for each surface that would be similar for objects within the same class and preserve dissimilarities between classes. We introduce Self Functional Maps as a novel surface representation that satisfies these properties, translating the geometric problem of surface classification into an algebraic form of classifying matrices. The proposed map transforms a given surface into a universal isometry invariant form defined by a unique matrix. The suggested representation is realized by applying the functional maps framework to map the surface into itself. The key idea is to use two different metric spaces of the same surface for which the functional map serves as a signature. Specifically, in this paper, we use the regular and the scale invariant surface laplacian operators to construct two families of eigenfunctions. The result is a matrix that encodes the interaction between the eigenfunctions resulted from two different Riemannian manifolds of the same surface. Using this representation, geometric shape similarity is converted into algebraic distances between matrices.
机译:用于表面分类的经典方法是为每个表面找到一个紧凑的代数表示,该表示对于相同类别内的对象将是相似的,并保留类别之间的不相似性。我们将自我功能图作为满足这些特性的新颖表面表示形式进行介绍,将表面分类的几何问题转化为分类矩阵的代数形式。拟议的地图将给定的表面转换为由唯一矩阵定义的通用等距不变形式。通过应用功能图框架将表面映射到自身中,可以实现建议的表示形式。关键思想是使用功能图用作签名的同一表面的两个不同度量空间。具体来说,在本文中,我们使用正则和尺度不变表面拉普拉斯算子构造两个本征函数族。结果是一个矩阵,该矩阵编码了同一表面的两个不同黎曼流形所产生的本征函数之间的相互作用。使用这种表示,将几何形状相似度转换为矩阵之间的代数距离。

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