With the recent advances in remote sensing of objects and environments, point cloud processing has become a major field of study. Three-dimensional point cloud collected with remote sensing instruments may be very large, containing up to several tens of billions of points. This imposes the use for efficient and automatic algorithms to extract geometric or structural elements of the scanned surfaces. In this paper, we focus on the estimation of normal directions in an unorganized point cloud and provide a curvature indicator. We avoid point-wise operations to accelerate the running time for normals estimation. Instead, our method rely on an innovative anisotropic partitioning of the point cloud using an octree structure guided by the geometr...
Edges provide important visual information in scene surfaces. The need for fast and robust feature e...
This paper presents a new approach for constructing normal maps that capture high-frequency geometri...
We present a fast and practical approach for estimating robust normal vectors in unorganized point c...
With the recent advances in remote sensing of objects and environments, point cloud processing has b...
Proceedings of the 10th Symposium of on Geometry Processing (SGP 2012), Tallinn, Estonia, July 2012....
International audienceThe estimation of differential quantities on oriented point cloud is a classic...
The density and data volumes for recorded 3D surfaces increase steadily. In particular during photog...
International audienceNormal estimation in point clouds is a crucial first step for numerous algorit...
International audiencePoint clouds are now ubiquitous in computer graphics and computer vision. Diff...
Today, polygonal models occur everywhere in graphical applications, since they are easy to render a...
Numerous applications processing 3D point data will gain from the ability to estimate reliably norma...
We propose a generic point cloud encoder that compresses geometry data including positions and norma...
Abstract—We present an efficient and robust method for extracting curvature information, sharp featu...
© 2017 Authors. Point cloud segmentation is a crucial step in scene understanding and interpretation...
Abstract—Edges provide important visual information in scene surfaces. The need for fast and robust ...
Edges provide important visual information in scene surfaces. The need for fast and robust feature e...
This paper presents a new approach for constructing normal maps that capture high-frequency geometri...
We present a fast and practical approach for estimating robust normal vectors in unorganized point c...
With the recent advances in remote sensing of objects and environments, point cloud processing has b...
Proceedings of the 10th Symposium of on Geometry Processing (SGP 2012), Tallinn, Estonia, July 2012....
International audienceThe estimation of differential quantities on oriented point cloud is a classic...
The density and data volumes for recorded 3D surfaces increase steadily. In particular during photog...
International audienceNormal estimation in point clouds is a crucial first step for numerous algorit...
International audiencePoint clouds are now ubiquitous in computer graphics and computer vision. Diff...
Today, polygonal models occur everywhere in graphical applications, since they are easy to render a...
Numerous applications processing 3D point data will gain from the ability to estimate reliably norma...
We propose a generic point cloud encoder that compresses geometry data including positions and norma...
Abstract—We present an efficient and robust method for extracting curvature information, sharp featu...
© 2017 Authors. Point cloud segmentation is a crucial step in scene understanding and interpretation...
Abstract—Edges provide important visual information in scene surfaces. The need for fast and robust ...
Edges provide important visual information in scene surfaces. The need for fast and robust feature e...
This paper presents a new approach for constructing normal maps that capture high-frequency geometri...
We present a fast and practical approach for estimating robust normal vectors in unorganized point c...