Mobile laser scanning (MLS) is a modern and powerful technology capable of obtaining massive point clouds of objects in a short period of time. Although this technology is nowadays being widely applied in urban cartography and 3D city modelling, it has some drawbacks that need to be avoided in order to strengthen it. One of the most important shortcomings of MLS data is concerned with the fact that it provides an unstructured dataset whose processing is very time-consuming. Consequently, there is a growing interest in developing algorithms for the automatic extraction of useful information from MLS point clouds. This work is focused on establishing a methodology and developing an algorithm to detect pole-like objects and classify them into ...
Detecting and modeling urban furniture are of particular interest for urban management and the devel...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
International audienceThis paper introduces a new Urban Point Cloud Dataset for Automatic Segmentati...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...
Mobile Laser Scanning (MLS) point cloud data contains rich three-dimensional (3D) information on roa...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...
The demand for 3D maps of cities and road networks is steadily growing and mobile laser scanning (ML...
With the spread of the Mobile Laser Scanning (MLS) system, the demands for the management of road an...
With the spread of the Mobile Laser Scanning (MLS) system, the demands for the management of road an...
Surveys of roadways with Mobile Laser Scanning (MLS) are nowadays the faster and more secured way to...
The mobile laser scanning (MLS) technique has attracted considerable attention for providing high-de...
This letter is dedicated to an automated approach for the detection and classification of man-made o...
KEY WORDS: Mobile laser scanning, object based point cloud analysis, eigenvalues, graph based classi...
Dense point clouds can be collected efficiently from large areas using mobile laser scanning (MLS) t...
Dense point clouds can be collected efficiently from large areas using mobile laser scanning (MLS) t...
Detecting and modeling urban furniture are of particular interest for urban management and the devel...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
International audienceThis paper introduces a new Urban Point Cloud Dataset for Automatic Segmentati...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...
Mobile Laser Scanning (MLS) point cloud data contains rich three-dimensional (3D) information on roa...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...
The demand for 3D maps of cities and road networks is steadily growing and mobile laser scanning (ML...
With the spread of the Mobile Laser Scanning (MLS) system, the demands for the management of road an...
With the spread of the Mobile Laser Scanning (MLS) system, the demands for the management of road an...
Surveys of roadways with Mobile Laser Scanning (MLS) are nowadays the faster and more secured way to...
The mobile laser scanning (MLS) technique has attracted considerable attention for providing high-de...
This letter is dedicated to an automated approach for the detection and classification of man-made o...
KEY WORDS: Mobile laser scanning, object based point cloud analysis, eigenvalues, graph based classi...
Dense point clouds can be collected efficiently from large areas using mobile laser scanning (MLS) t...
Dense point clouds can be collected efficiently from large areas using mobile laser scanning (MLS) t...
Detecting and modeling urban furniture are of particular interest for urban management and the devel...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
International audienceThis paper introduces a new Urban Point Cloud Dataset for Automatic Segmentati...