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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Numerical Inversion of SRNF Maps for Elastic Shape Analysis of Genus-Zero Surfaces
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Numerical Inversion of SRNF Maps for Elastic Shape Analysis of Genus-Zero Surfaces

机译:用于零类曲面弹性形状分析的SRNF映射的数值反演

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摘要

Recent developments in elastic shape analysis (ESA) are motivated by the fact that it provides a comprehensive framework for simultaneous registration, deformation, and comparison of shapes. These methods achieve computational efficiency using certain square-root representations that transform invariant elastic metrics into euclidean metrics, allowing for the application of standard algorithms and statistical tools. For analyzing shapes of embeddings of $mathbf {S}^2$ in $mathbb {R}^3$ , Jermyn et al. [1] introduced square-root normal fields (SRNFs), which transform an elastic metric, with desirable invariant properties, into the $mathbb {L}^2$ metric. These SRNFs are essentially surface normals scaled by square-roots of infinitesimal area elements. A critical need in shape analysis is a method for inverting solutions (deformations, averages, modes of variations, etc.) computed in SRNF space, back to the original surface space for visualizations and inferences. Due to the lack of theory for understanding SRNF maps and their inverses, we take a numerical approach, and derive an efficient multiresolution algorithm, based on solving an optimization problem in the surface space, that estimates surfaces corresponding to given SRNFs. This solution is found to be effective even for complex shapes that undergo significant deformations including bending and stretching, e.g., human bodies and animals. We use this inversion for computing elastic shape deformations, transferring deformations, summarizing shapes, and for finding modes of variability in a given collection, while simultaneously registering the surfaces. We demonstrate the proposed algorithms using a statistical analysis of human body shapes, classification of generic surfaces, and analysis of brain structures.
机译:弹性形状分析(ESA)的最新发展受到以下事实的启发:它提供了同时进行配准,变形和形状比较的综合框架。这些方法使用某些平方根表示来实现计算效率,该表示将不变弹性指标转换为欧几里德指标,从而允许应用标准算法和统计工具。用于分析 $ mathbf {S} ^ 2 $ $ mathbb {R} ^ 3 $ Jermyn等人, [1] 引入了平方根法线字段(SRNF),该字段将具有所需不变属性的弹性度量转换为 $ mathbb {L} ^ 2 $ 指标。这些SRNF本质上是由无穷小面积元素的平方根缩放的表面法线。形状分析中的一项关键需求是一种将SRNF空间中计算出的解(变形,平均值,变化模式等)转换回原始表面空间以进行可视化和推理的方法。由于缺乏理解SRNF映射及其逆的理论,我们采用一种数值方法,并基于解决表面空间中的优化问题,推导了一种有效的多分辨率算法,该算法可估计与给定SRNF对应的表面。发现该解决方案甚至对于经受包括弯曲和拉伸的明显变形的复杂形状(例如,人体和动物)也是有效的。我们使用这种反演来计算弹性形状变形,传递变形,汇总形状,以及在给定集合中查找变异模式,同时注册曲面。我们使用人体形状的统计分析,通用表面的分类以及大脑结构的分析来证明所提出的算法。

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