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 ...
LiDARs are one of the key sources of reliable environmental ranging information for autonomous vehic...
Three-dimensional digital models play a pivotal role in city planning, monitoring, and sustainable m...
Segmentation and classification of urban range data into different object classes have several chall...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
We describe an effective and efficient method for point-wise semantic classification of 3D point clo...
Semantic segmentation is a challenging task in the robotic vision community to classify various obje...
ISBN 978-1-4244-3460-2International audienceThis paper presents a new method for segmentation and in...
Semantic segmentation of mobile LiDAR point clouds is an essential task in many fields such as road ...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
LiDAR technology can provide very detailed and highly accurate geospatial information on an urban sc...
We describe an effective and efficient method for point-wise semantic classification of 3D point clo...
LiDARs are one of the key sources of reliable environmental ranging information for autonomous vehic...
Three-dimensional digital models play a pivotal role in city planning, monitoring, and sustainable m...
Segmentation and classification of urban range data into different object classes have several chall...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
We describe an effective and efficient method for point-wise semantic classification of 3D point clo...
Semantic segmentation is a challenging task in the robotic vision community to classify various obje...
ISBN 978-1-4244-3460-2International audienceThis paper presents a new method for segmentation and in...
Semantic segmentation of mobile LiDAR point clouds is an essential task in many fields such as road ...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
LiDAR technology can provide very detailed and highly accurate geospatial information on an urban sc...
We describe an effective and efficient method for point-wise semantic classification of 3D point clo...
LiDARs are one of the key sources of reliable environmental ranging information for autonomous vehic...
Three-dimensional digital models play a pivotal role in city planning, monitoring, and sustainable m...
Segmentation and classification of urban range data into different object classes have several chall...