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Topology-Invariant Similarity of Nonrigid Shapes

机译:非刚性形状的拓扑不变性相似性

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This paper explores the problem of similarity criteria between nonrigid shapes. Broadly speaking, such criteria are divided into intrinsic and extrinsic, the first referring to the metric structure of the object and the latter to how it is laid out in the Euclidean space. Both criteria have their advantages and disadvantages: extrinsic similarity is sensitive to nonrigid deformations, while intrinsic similarity is sensitive to topological noise. In this paper, we approach the problem from the perspective of metric geometry. We show that by unifying the extrinsic and intrinsic similarity criteria, it is possible to obtain a stronger topology-invariant similarity, suitable for comparing deformed shapes with different topology. We construct this new joint criterion as a tradeoff between the extrinsic and intrinsic similarity and use it as a set-valued distance. Numerical results demonstrate the efficiency of our approach in cases where using either extrinsic or intrinsic criteria alone would fail.
机译:本文探讨了非刚性形状之间相似性标准的问题。广义上讲,这样的标准分为内在标准和外在标准,前者指的是对象的度量结构,后者指的是其在欧几里得空间中的布局方式。这两个标准都有其优缺点:外在相似度对非刚性变形敏感,而内在相似度对拓扑噪声敏感。在本文中,我们从度量几何的角度来解决这个问题。我们表明,通过统一外部和固有相似性准则,可以获取更强的拓扑不变相似性,适合于比较具有不同拓扑的变形形状。我们将此新的联合标准构造为外部相似性和内部相似性之间的折衷,并将其用作集合值距离。数值结果表明,仅使用外部或固有标准失败的情况下,我们的方法是有效的。

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