Many point cloud acquisition methods, e.g. multi-viewpoint image stereo matching and acquisition of depth data from active light sensors, suffer from significant geometry noise in the data. In the existing literature, denoising of this geometry noise has been performed using only geometry information. In this paper, based on the notion that color attributes are correlated with the geometry, we propose a novel geometry denoising technique that takes advantage of this correlation via a graph-based optimization process. In particular, we construct a graph based on both color and geometry information, and use it for graph-based Tikhonov regularization. Results on synthetic and real-world point clouds show that the proposed denoising method sign...
The increased availability of point cloud data in recent years has lead to a concomitant requirement...
International audienceIn this paper we present a methodology for nonlocal processing of 3D colored p...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
A point cloud is an effective 3D geometrical presentation of data paired with different attributes s...
A point cloud is an effective 3D geometrical presentation of data paired with different attributes s...
A point cloud is a 3D geometric signal representation associated with other attributes such as color...
Noisy 3D point clouds arise in many applications. They may be due to errors when creating a 3D model...
Point clouds are an increasingly relevant data type but they are often corrupted by noise. We propos...
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...
3D point clouds commonly contain positional errors which can be regarded as noise. We propose a poin...
International audienceLight fields are 4D signals capturing rich information from a scene. The avail...
Recovering high quality surfaces from noisy point clouds, known as point cloud denoising, is a funda...
Point clouds (PCs) provide fundamental tools for digital representation of 3D surfaces, which have ...
Recent advancement in scanning technologies has allowed an object to be represented in the 3D point ...
The increased availability of point cloud data in recent years has lead to a concomitant requirement...
International audienceIn this paper we present a methodology for nonlocal processing of 3D colored p...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
A point cloud is an effective 3D geometrical presentation of data paired with different attributes s...
A point cloud is an effective 3D geometrical presentation of data paired with different attributes s...
A point cloud is a 3D geometric signal representation associated with other attributes such as color...
Noisy 3D point clouds arise in many applications. They may be due to errors when creating a 3D model...
Point clouds are an increasingly relevant data type but they are often corrupted by noise. We propos...
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...
3D point clouds commonly contain positional errors which can be regarded as noise. We propose a poin...
International audienceLight fields are 4D signals capturing rich information from a scene. The avail...
Recovering high quality surfaces from noisy point clouds, known as point cloud denoising, is a funda...
Point clouds (PCs) provide fundamental tools for digital representation of 3D surfaces, which have ...
Recent advancement in scanning technologies has allowed an object to be represented in the 3D point ...
The increased availability of point cloud data in recent years has lead to a concomitant requirement...
International audienceIn this paper we present a methodology for nonlocal processing of 3D colored p...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...