论文标题

在强大的统计框架中,基于正常过滤的表面降解

Surface Denoising based on Normal Filtering in a Robust Statistics Framework

论文作者

Yadav, Sunil Kumar, Skrodzki, Martin, Zimmermann, Eric, Polthier, Konrad

论文摘要

在使用3D扫描仪的表面采集过程中,噪声是不可避免的,几何处理的重要一步是从这些表面(以点集或三角形网格给出)去除这些噪声组件。可以通过首先过滤表面正态并根据过滤的正态来调整顶点位置来执行噪声解析过程(DENOISIST)。因此,在许多可用的DeNOTO算法中,无噪声正态的计算是关键因素。已经引入了各种过滤器,以从正常的噪声中驱动噪声,具有不同的焦点,例如鲁棒性针对异常值或大幅度的噪声振幅。尽管这些过滤器在不同方面表现良好,但缺少一个统一的框架来建立它们之间的关系并提供超出每种方法性能的理论分析。 在本文中,我们介绍了这样一个框架,以建立许多广泛使用的非线性过滤器,用于网格denoising中的脸部正常和尖位正态的正态。我们使用M-Smoothorts涵盖了稳健的统计估计,并将其应用于线性和非线性正常滤波。尽管这些方法起源于不同的数学理论(包括扩散 - 双侧和基于方向曲率的算法),但我们证明所有这些算法都可以使用强大的误差规范及其相应的影响功能,将所有这些算法施加在统一的可靠统计框架中。这种统一有助于更好地理解各个方法及其彼此之间的关系。此外,提出的框架为新技术提供了一个平台,以结合已知过滤器的优势并将其与可用方法进行比较。

During a surface acquisition process using 3D scanners, noise is inevitable and an important step in geometry processing is to remove these noise components from these surfaces (given as points-set or triangulated mesh). The noise-removal process (denoising) can be performed by filtering the surface normals first and by adjusting the vertex positions according to filtered normals afterwards. Therefore, in many available denoising algorithms, the computation of noise-free normals is a key factor. A variety of filters have been introduced for noise-removal from normals, with different focus points like robustness against outliers or large amplitude of noise. Although these filters are performing well in different aspects, a unified framework is missing to establish the relation between them and to provide a theoretical analysis beyond the performance of each method. In this paper, we introduce such a framework to establish relations between a number of widely-used nonlinear filters for face normals in mesh denoising and vertex normals in point set denoising. We cover robust statistical estimation with M-smoothers and their application to linear and non-linear normal filtering. Although these methods originate in different mathematical theories - which include diffusion-, bilateral-, and directional curvature-based algorithms - we demonstrate that all of them can be cast into a unified framework of robust statistics using robust error norms and their corresponding influence functions. This unification contributes to a better understanding of the individual methods and their relations with each other. Furthermore, the presented framework provides a platform for new techniques to combine the advantages of known filters and to compare them with available methods.

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