To reduce the cost of manually annotating training data for supervised classifiers, we propose an automated approach to extract training data of urban objects in six classes: buildings, fences, man-made poles, vegetation, vehicles, and low objects. In this study, two segmentation algorithms are firstly implemented to generate meaningful objects from the non-ground point cloud. Then, we generated valid strict rules to label partial RANSAC (Random Sample Consensus) planes and meaningful objects as training data. The strict rules are built upon the semantic knowledge formed by the features of geometric, eigenvalue, RANSAC plane, multidimensional slice, and relative location. The accuracy of strict rule-based (SRB) training data is higher than ...
Current mobile systems are capable of efficiently acquiring dense urban point clouds. Still, operati...
© 2020 Hanxian HeMobile lidar data have been widely used in building 3D models, road mapping and inv...
Currently, data captured by Mobile Laser Scanners (MLS) is becoming a leading source for the modelli...
To reduce the cost of manually annotating training data for supervised classifiers, we propose an au...
International audienceThis paper introduces a new Urban Point Cloud Dataset for Automatic Segmentati...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
Supervised classification is the commonly used method for extracting ground information from images....
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
Accessibility diagnosis of as-built urban environments is essential for path planning, especially in...
Abstract: This paper describes a publicly available 3D database from the rue Madame, a street in the...
Semantic segmentation of large-scale mobile laser scanning (MLS) point clouds is essential for urban...
Urban trees are vital elements of outdoor scenes via mobile laser scanning (MLS), accurate individua...
Mobile laser scanning (MLS) is a modern and powerful technology capable of obtaining massive point c...
Current mobile systems are capable of efficiently acquiring dense urban point clouds. Still, operati...
© 2020 Hanxian HeMobile lidar data have been widely used in building 3D models, road mapping and inv...
Currently, data captured by Mobile Laser Scanners (MLS) is becoming a leading source for the modelli...
To reduce the cost of manually annotating training data for supervised classifiers, we propose an au...
International audienceThis paper introduces a new Urban Point Cloud Dataset for Automatic Segmentati...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
It is fundamental for 3D city maps to efficiently classify objects of point clouds in urban scenes. ...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
Supervised classification is the commonly used method for extracting ground information from images....
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
Accessibility diagnosis of as-built urban environments is essential for path planning, especially in...
Abstract: This paper describes a publicly available 3D database from the rue Madame, a street in the...
Semantic segmentation of large-scale mobile laser scanning (MLS) point clouds is essential for urban...
Urban trees are vital elements of outdoor scenes via mobile laser scanning (MLS), accurate individua...
Mobile laser scanning (MLS) is a modern and powerful technology capable of obtaining massive point c...
Current mobile systems are capable of efficiently acquiring dense urban point clouds. Still, operati...
© 2020 Hanxian HeMobile lidar data have been widely used in building 3D models, road mapping and inv...
Currently, data captured by Mobile Laser Scanners (MLS) is becoming a leading source for the modelli...