Removing Shape-Preserving Transformations in Square-Root Elastic (SRE) Framework for Shape Analysis of Curves.

Shantanu H Joshi, Eric Klassen, Anuj Srivastava, Ian Jermyn
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Abstract

This paper illustrates and extends an efficient framework, called the square-root-elastic (SRE) framework, for studying shapes of closed curves, that was first introduced in [2]. This framework combines the strengths of two important ideas - elastic shape metric and path-straightening methods - for finding geodesics in shape spaces of curves. The elastic metric allows for optimal matching of features between curves while path-straightening ensures that the algorithm results in geodesic paths. This paper extends this framework by removing two important shape preserving transformations: rotations and re-parameterizations, by forming quotient spaces and constructing geodesics on these quotient spaces. These ideas are demonstrated using experiments involving 2D and 3D curves.

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在用于曲线形状分析的方根弹性(SRE)框架中去除保形变换
本文说明并扩展了一个用于研究闭合曲线形状的高效框架,即平方根弹性框架(SRE),该框架在 [2] 中首次提出。该框架结合了两个重要思想--弹性形状度量和路径拉直方法--的优势,用于在曲线的形状空间中寻找大地线。弹性度量可实现曲线间特征的最佳匹配,而路径拉直可确保算法得到大地路径。本文通过移除两个重要的形状保持变换:旋转和重参数化,形成商空间并在这些商空间上构建大地线,从而扩展了这一框架。本文通过二维和三维曲线的实验演示了这些想法。
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