In this paper we present a novel street scene semantic recognition framework, which takes advantage of 3D point clouds captured by a high definition LiDAR laser scanner. An important problem in object recognition is the need for sufficient labeled training data to learn robust classifiers. In this paper we show how to significantly re-duce the need for manually labeled training data by reduction of scene complexity using non-supervised ground and building segmentation. Our system first automatically seg-ments grounds point cloud, this is because the ground connects almost all other objects and we will use a connect component based algorithm to over segment the point clouds. Then, using binary range image processing building facades will be ...
The acquisition of 3D point clouds representing the surface structure of real-world scenes has becom...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
Managing a city efficiently and effectively is more important than ever as growing population and ec...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
Develop a method of annotating 3d sparse data (point cloud) in an efficient way with the help of dee...
peer reviewedSemantic segmentation of Lidar data using Deep Learning (DL) is a fundamental step for ...
In this paper, we propose a framework for obtaining semantic labels of LiDAR point clouds and refini...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
Three-dimensional (3D) city models are of great significance and are high in demand. They can be use...
A LiDAR point cloud is 3D data which contains millions of data points represented in the form I (x, ...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
Understanding and interpreting a scene is a key task of environment perception for autonomous drivin...
The acquisition of 3D point clouds representing the surface structure of real-world scenes has becom...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
Managing a city efficiently and effectively is more important than ever as growing population and ec...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
Develop a method of annotating 3d sparse data (point cloud) in an efficient way with the help of dee...
peer reviewedSemantic segmentation of Lidar data using Deep Learning (DL) is a fundamental step for ...
In this paper, we propose a framework for obtaining semantic labels of LiDAR point clouds and refini...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
Three-dimensional (3D) city models are of great significance and are high in demand. They can be use...
A LiDAR point cloud is 3D data which contains millions of data points represented in the form I (x, ...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
Understanding and interpreting a scene is a key task of environment perception for autonomous drivin...
The acquisition of 3D point clouds representing the surface structure of real-world scenes has becom...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
Managing a city efficiently and effectively is more important than ever as growing population and ec...