基于非欧几里得小波的多分辨率形状分析:在网格分割和表面对齐问题中的应用。

Won Hwa Kim, Moo K Chung, Vikas Singh
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引用次数: 20

摘要

三维形状网格的分析是计算机视觉、图形学和医学成像中的一个基本问题。通常,应用程序的需求要求我们的分析采用形状的局部和全局拓扑的多分辨率视图,并且解决方案在多个尺度上是一致的。不幸的是,在经典图像/信号处理中提供这种行为的首选数学结构,小波,不再适用于这种一般设置(具有非均匀拓扑的数据)。特别是,传统的定义不允许写出不对应于均匀采样晶格的图的展开(例如,图像)。在本文中,我们采用谐波分析的最新结果,推导出基于非欧几里德小波的算法,用于视觉和医学成像中的一系列形状分析问题。我们展示了从对偶域表示派生的描述符如何为描述顶点周围的局部/全局拓扑提供本地多分辨率行为。仅经过少量修改,该框架就产生了一种从形状中提取兴趣/关键点的方法,一种非常简单的3-D形状分割算法(与最先进的算法相竞争),以及一种表面对齐方法(没有地标)。我们在一个大的形状分割基准上给出了一组广泛的比较结果,并导出了曲面对齐问题的唯一性定理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-resolution Shape Analysis via Non-Euclidean Wavelets: Applications to Mesh Segmentation and Surface Alignment Problems.

The analysis of 3-D shape meshes is a fundamental problem in computer vision, graphics, and medical imaging. Frequently, the needs of the application require that our analysis take a multi-resolution view of the shape's local and global topology, and that the solution is consistent across multiple scales. Unfortunately, the preferred mathematical construct which offers this behavior in classical image/signal processing, Wavelets, is no longer applicable in this general setting (data with non-uniform topology). In particular, the traditional definition does not allow writing out an expansion for graphs that do not correspond to the uniformly sampled lattice (e.g., images). In this paper, we adapt recent results in harmonic analysis, to derive Non-Euclidean Wavelets based algorithms for a range of shape analysis problems in vision and medical imaging. We show how descriptors derived from the dual domain representation offer native multi-resolution behavior for characterizing local/global topology around vertices. With only minor modifications, the framework yields a method for extracting interest/key points from shapes, a surprisingly simple algorithm for 3-D shape segmentation (competitive with state of the art), and a method for surface alignment (without landmarks). We give an extensive set of comparison results on a large shape segmentation benchmark and derive a uniqueness theorem for the surface alignment problem.

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