Fast and effective feature-preserving mesh denoising
We present a simple and fast mesh denoising method, which can remove noise effectively
while preserving mesh features such as sharp edges and corners. The method consists of …
while preserving mesh features such as sharp edges and corners. The method consists of …
Mesh denoising via L0 minimization
L He, S Schaefer - ACM Transactions on Graphics (TOG), 2013 - dl.acm.org
We present an algorithm for denoising triangulated models based on L 0 minimization. Our
method maximizes the flat regions of the model and gradually removes noise while …
method maximizes the flat regions of the model and gradually removes noise while …
Bilateral normal filtering for mesh denoising
Decoupling local geometric features from the spatial location of a mesh is crucial for feature-
preserving mesh denoising. This paper focuses on first order features, ie, facet normals, and …
preserving mesh denoising. This paper focuses on first order features, ie, facet normals, and …
[PDF][PDF] Mesh denoising via cascaded normal regression.
We present a data-driven approach for mesh denoising. Our key idea is to formulate the
denoising process with cascaded non-linear regression functions and learn them from a set …
denoising process with cascaded non-linear regression functions and learn them from a set …
GCN-denoiser: mesh denoising with graph convolutional networks
In this article, we present GCN-Denoiser, a novel feature-preserving mesh denoising
method based on graph convolutional networks (GCNs). Unlike previous learning-based …
method based on graph convolutional networks (GCNs). Unlike previous learning-based …
Robust normal vector estimation in 3D point clouds through iterative principal component analysis
J Sanchez, F Denis, D Coeurjolly, F Dupont… - ISPRS Journal of …, 2020 - Elsevier
This paper introduces a robust normal vector estimator for point cloud data. It can handle
sharp features as well as smooth areas. Our method is based on the inclusion of a robust …
sharp features as well as smooth areas. Our method is based on the inclusion of a robust …
Variational mesh denoising using total variation and piecewise constant function space
Mesh surface denoising is a fundamental problem in geometry processing. The main
challenge is to remove noise while preserving sharp features (such as edges and corners) …
challenge is to remove noise while preserving sharp features (such as edges and corners) …
Fuzzy peer groups for reducing mixed Gaussian-impulse noise from color images
S Morillas, V Gregori, A Hervás - IEEE Transactions on Image …, 2009 - ieeexplore.ieee.org
The peer group of an image pixel is a pixel similarity-based concept which has been
successfully used to devise image denoising methods. However, since it is difficult to define …
successfully used to devise image denoising methods. However, since it is difficult to define …
Low rank matrix approximation for 3D geometry filtering
We propose a robust normal estimation method for both point clouds and meshes using a
low rank matrix approximation algorithm. First, we compute a local isotropic structure for …
low rank matrix approximation algorithm. First, we compute a local isotropic structure for …
Mesh denoising guided by patch normal co-filtering via kernel low-rank recovery
Mesh denoising is a classical, yet not well-solved problem in digital geometry processing.
The challenge arises from noise removal with the minimal disturbance of surface intrinsic …
The challenge arises from noise removal with the minimal disturbance of surface intrinsic …