Surface Denoising based on Normal Filtering in a Robust Statistics Framework
Sunil Kumar Yadav, Martin Skrodzki, Eric Zimmermann, Konrad, Polthier

TL;DR
This paper introduces a unified robust statistical framework for surface denoising that relates various normal filtering techniques, enhancing understanding and enabling the development of improved denoising algorithms.
Contribution
It unifies multiple normal filtering methods within a robust statistics framework, clarifying their relations and facilitating the creation of new, more effective denoising techniques.
Findings
All filters can be cast into a robust statistics framework
The framework reveals relationships between different denoising methods
It enables comparison and combination of existing filters
Abstract
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…
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