ISBN 978-1-4244-3460-2International audienceThis paper presents a new method for segmentation and interpretation of 3D point clouds from mobile LIDAR data. The main contribution of this work is the automatic detection and classification of artifacts located at the ground level. The detection is based on Top-Hat of hole filling algorithm of range images. Then, several features are extracted from the detected connected components (CCs). Afterward, a stepwise forward variable selection by using Wilk's Lambda criterion is performed. Finally, CCs are classified in four categories (lampposts, pedestrians, cars, the others) by using a SVM machine learning method
A LiDAR point cloud is 3D data which contains millions of data points represented in the form I (x, ...
This paper presents a new method for segmentation of LIDAR point cloud data for automatic building e...
Airborne LiDAR point clouds classification is meaningful for various applications. In this paper, an...
International audienceThis paper presents an automatic method for filtering and segmenting 3D point ...
International audienceThis paper proposes a novel methodology for LiDAR point cloud processing that ...
Light Detection and Ranging, (LiDAR) presents a series of unique challenges, the foremost of these b...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
This paper proposes a novel framework for the disocclusion of mobile objects in 3D LiDAR scenes aqui...
According to the spatial structure characteristics of road curbs and road surfaces, a robust method ...
AbstractThis paper presents novel approach for detection of pole-like objects from LIDAR data. The d...
Detection of vehicles on 3D point clouds is performed by using the algorithm presented in this work....
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
This paper presents a new method for segmentation of LIDAR point cloud data for automatic building e...
LiDAR is a remote sensing technology which uses a set of 3D geo-referenced points in order to descri...
Automatic vehicle extraction from an airborne laser scanning (ALS) point cloud is very useful for ma...
A LiDAR point cloud is 3D data which contains millions of data points represented in the form I (x, ...
This paper presents a new method for segmentation of LIDAR point cloud data for automatic building e...
Airborne LiDAR point clouds classification is meaningful for various applications. In this paper, an...
International audienceThis paper presents an automatic method for filtering and segmenting 3D point ...
International audienceThis paper proposes a novel methodology for LiDAR point cloud processing that ...
Light Detection and Ranging, (LiDAR) presents a series of unique challenges, the foremost of these b...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
This paper proposes a novel framework for the disocclusion of mobile objects in 3D LiDAR scenes aqui...
According to the spatial structure characteristics of road curbs and road surfaces, a robust method ...
AbstractThis paper presents novel approach for detection of pole-like objects from LIDAR data. The d...
Detection of vehicles on 3D point clouds is performed by using the algorithm presented in this work....
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
This paper presents a new method for segmentation of LIDAR point cloud data for automatic building e...
LiDAR is a remote sensing technology which uses a set of 3D geo-referenced points in order to descri...
Automatic vehicle extraction from an airborne laser scanning (ALS) point cloud is very useful for ma...
A LiDAR point cloud is 3D data which contains millions of data points represented in the form I (x, ...
This paper presents a new method for segmentation of LIDAR point cloud data for automatic building e...
Airborne LiDAR point clouds classification is meaningful for various applications. In this paper, an...