Abstract—Edges provide important visual information in scene surfaces. The need for fast and robust feature extraction from 3D data is nowadays fostered by the widespread availability of cheap commercial depth sensors and multi-camera setups. This article investigates the challenge of detecting edges in surfaces represented by unorganized point clouds. Generally, edge recognition requires the extraction of geometric features such as normal vectors and curvatures. Since the normals alone do not provide enough information about the geometry of the cloud, further analysis of extracted normals is needed for edge extraction, such as a clustering method. Edge extraction through these techniques consists of several steps with parameters which depe...
Today, polygonal models occur everywhere in graphical applications, since they are easy to render a...
3D scanners are able to quickly and accurately digitise objects into Point Cloud Data (PCD). It has ...
International audienceIn recent years, Convolutional Neural Networks (CNN) have proven to be efficie...
Edges provide important visual information in scene surfaces. The need for fast and robust feature e...
Edge extraction has attracted a lot of attention in computer vision. The accuracy of extracting edg...
Edge extraction has attracted a lot of attention in computer vision. The accuracy of extracting edg...
International audienceThis paper presents a new technique for detecting sharp features on point-samp...
A method for edge detection in unorganised point clouds from terrestrial laser scanners without prep...
3D point clouds are a commonly used medium to represent and analyze object shapes. Edge detection is...
This paper gives an overview over several techniques for detection of features, and in particular sh...
Abstract—This paper presents a new technique for detecting sharp features on point-sampled geometry....
This paper presents an automated and effective method for detecting 3D edges and tracing feature lin...
This paper presents an automated and effective method for detecting 3D edges and tracing feature lin...
This paper describes a new method to extract feature lines directly from a surface point cloud. No s...
Defining sharp features in a given 3D model facili-tates a better understanding of the surface and a...
Today, polygonal models occur everywhere in graphical applications, since they are easy to render a...
3D scanners are able to quickly and accurately digitise objects into Point Cloud Data (PCD). It has ...
International audienceIn recent years, Convolutional Neural Networks (CNN) have proven to be efficie...
Edges provide important visual information in scene surfaces. The need for fast and robust feature e...
Edge extraction has attracted a lot of attention in computer vision. The accuracy of extracting edg...
Edge extraction has attracted a lot of attention in computer vision. The accuracy of extracting edg...
International audienceThis paper presents a new technique for detecting sharp features on point-samp...
A method for edge detection in unorganised point clouds from terrestrial laser scanners without prep...
3D point clouds are a commonly used medium to represent and analyze object shapes. Edge detection is...
This paper gives an overview over several techniques for detection of features, and in particular sh...
Abstract—This paper presents a new technique for detecting sharp features on point-sampled geometry....
This paper presents an automated and effective method for detecting 3D edges and tracing feature lin...
This paper presents an automated and effective method for detecting 3D edges and tracing feature lin...
This paper describes a new method to extract feature lines directly from a surface point cloud. No s...
Defining sharp features in a given 3D model facili-tates a better understanding of the surface and a...
Today, polygonal models occur everywhere in graphical applications, since they are easy to render a...
3D scanners are able to quickly and accurately digitise objects into Point Cloud Data (PCD). It has ...
International audienceIn recent years, Convolutional Neural Networks (CNN) have proven to be efficie...