The increased availability of point cloud data in recent years has lead to a concomitant requirement for high quality denoising methods. This is particularly the case with data obtained using depth cameras or from multi-view stereo reconstruction as both approaches result in noisy point clouds and include significant outliers. Most of the available denoising methods in the literature are not sufficiently robust to outliers and/or are unable to preserve finescale 3D features in the denoised representations. In this paper we propose an approach to point cloud denoising that is both robust to outliers and capable of preserving finescale 3D features. We identify and remove outliers by utilising a dissimilarity measure based on point positions a...
Many point cloud acquisition methods, e.g. multi-viewpoint image stereo matching and acquisition of ...
International audienceDenoising surfaces is a a crucial step in the surface processing pipeline. Thi...
Dense 3D visual mapping estimates as many as possible pixel depths, for each image. This results in ...
The increased availability of point cloud data in recent years has lead to a concomitant requirement...
International audienceLight fields are 4D signals capturing rich information from a scene. The avail...
3D point clouds commonly contain positional errors which can be regarded as noise. We propose a poin...
The emergence of laser/LiDAR sensors, reliable multi-view stereo techniques and more recently consum...
This article addresses the problem of denoising 3D data from LIDAR. It is a step often required to a...
International audienceThis article addresses the problem of denoising 3D data from LIDAR. It is a st...
Noisy 3D point clouds arise in many applications. They may be due to errors when creating a 3D model...
Point clouds (PCs) provide fundamental tools for digital representation of 3D surfaces, which have ...
Point cloud denoising aims to restore clean point clouds from raw observations corrupted by noise an...
Three dimensional point cloud data acquired from mobile laser scanning system commonly contain outli...
We present a 3D reconstruction algorithm designed to support various automation and navigation appli...
3D Structure-based localization aims to estimate the 6-DOF camera pose of a query image by means of ...
Many point cloud acquisition methods, e.g. multi-viewpoint image stereo matching and acquisition of ...
International audienceDenoising surfaces is a a crucial step in the surface processing pipeline. Thi...
Dense 3D visual mapping estimates as many as possible pixel depths, for each image. This results in ...
The increased availability of point cloud data in recent years has lead to a concomitant requirement...
International audienceLight fields are 4D signals capturing rich information from a scene. The avail...
3D point clouds commonly contain positional errors which can be regarded as noise. We propose a poin...
The emergence of laser/LiDAR sensors, reliable multi-view stereo techniques and more recently consum...
This article addresses the problem of denoising 3D data from LIDAR. It is a step often required to a...
International audienceThis article addresses the problem of denoising 3D data from LIDAR. It is a st...
Noisy 3D point clouds arise in many applications. They may be due to errors when creating a 3D model...
Point clouds (PCs) provide fundamental tools for digital representation of 3D surfaces, which have ...
Point cloud denoising aims to restore clean point clouds from raw observations corrupted by noise an...
Three dimensional point cloud data acquired from mobile laser scanning system commonly contain outli...
We present a 3D reconstruction algorithm designed to support various automation and navigation appli...
3D Structure-based localization aims to estimate the 6-DOF camera pose of a query image by means of ...
Many point cloud acquisition methods, e.g. multi-viewpoint image stereo matching and acquisition of ...
International audienceDenoising surfaces is a a crucial step in the surface processing pipeline. Thi...
Dense 3D visual mapping estimates as many as possible pixel depths, for each image. This results in ...