There are normally three main steps to carrying out the labeling of airborne laser scanning (ALS) point clouds. The first step is to use appropriate primitives to represent the scanning scenes, the second is to calculate the discriminative features of each primitive, and the third is to introduce a classifier to label the point clouds. This paper investigates multiple primitives to effectively represent scenes and exploit their geometric relationships. Relationships are graded according to the properties of related primitives. Then, based on initial labeling results, a novel, hierarchical, and optimal strategy is developed to optimize semantic labeling results. The proposed approach was tested using two sets of representative ALS point clou...
We propose a novel hierarchical approach for the classification of airborne 3D lidar points. Spatial...
Kumulative Dissertation aus fünf ArtikelALS (Airborne Laser Scanning)/Airborne LiDAR (Light Detectio...
We aim at efficiently classifying ALS data in urban areas by choosing an optimal combination of feat...
3D semantic labeling is a fundamental task in airborne laser scanning (ALS) point clouds processing....
3D point cloud classification has wide applications in the field of scene understanding. Point cloud...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
This paper presents an automated and effective framework for classifying airborne laser scanning (AL...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
While modern deep learning algorithms for semantic segmentation of airborne laser scanning (ALS) poi...
This paper presents a novel framework to achieve 3D semantic labeling of objects (e.g., trees, build...
Airborne laser scanning (ALS) point clouds have complex structures, and their 3D semantic labeling h...
Airborne laser scanning (ALS) point cloud classification is a challenge due to factors including com...
In this paper, we address the classification of airborne laser scanning data. We present a novel met...
In the practical and professional work of classifying airborne laser scanning (ALS) point clouds, th...
This article presents a newly developed procedure for the classification of airborne laser scanning ...
We propose a novel hierarchical approach for the classification of airborne 3D lidar points. Spatial...
Kumulative Dissertation aus fünf ArtikelALS (Airborne Laser Scanning)/Airborne LiDAR (Light Detectio...
We aim at efficiently classifying ALS data in urban areas by choosing an optimal combination of feat...
3D semantic labeling is a fundamental task in airborne laser scanning (ALS) point clouds processing....
3D point cloud classification has wide applications in the field of scene understanding. Point cloud...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
This paper presents an automated and effective framework for classifying airborne laser scanning (AL...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
While modern deep learning algorithms for semantic segmentation of airborne laser scanning (ALS) poi...
This paper presents a novel framework to achieve 3D semantic labeling of objects (e.g., trees, build...
Airborne laser scanning (ALS) point clouds have complex structures, and their 3D semantic labeling h...
Airborne laser scanning (ALS) point cloud classification is a challenge due to factors including com...
In this paper, we address the classification of airborne laser scanning data. We present a novel met...
In the practical and professional work of classifying airborne laser scanning (ALS) point clouds, th...
This article presents a newly developed procedure for the classification of airborne laser scanning ...
We propose a novel hierarchical approach for the classification of airborne 3D lidar points. Spatial...
Kumulative Dissertation aus fünf ArtikelALS (Airborne Laser Scanning)/Airborne LiDAR (Light Detectio...
We aim at efficiently classifying ALS data in urban areas by choosing an optimal combination of feat...