Airborne laser scanning (ALS) point cloud classification is a necessary step for understanding 3-D scenes and their applications in various industries. However, the classification accuracy and efficiency are low: 1) point cloud classification methods lack effective filtering of the large number of traditional features, 2) significant category imbalance and coordinate scale problems in ALS point cloud classification. To address these problems, this article proposes an airborne LiDAR point cloud classification method based on deep learning network with optimal feature fusion-based spectral information. This method involves the following steps: First, multiscale point cloud features are extracted, and random forest method is used to filter the...
The classification of point clouds is a basic task in airborne laser scanning (ALS) point cloud proc...
Point-cloud classification is one of the most impor- tant and time consuming stages of airborne LiDA...
A method for land-cover classification was proposed based on the fusion of features generated from w...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
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...
3D point cloud classification has wide applications in the field of scene understanding. Point cloud...
LiDAR point clouds are rich in spatial information and can effectively express the size, shape, posi...
Various classification methods have been developed to extract meaningful information from Airborne L...
Airborne laser scanning (ALS) data is one of the most commonly used data for terrain products genera...
Classification of aerial point clouds with high accuracy is significant for many geographical applic...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Exploring automatic point cloud classification method is of great importance to 3D modeling,city lan...
In the practical and professional work of classifying airborne laser scanning (ALS) point clouds, th...
Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-...
The classification of point clouds is a basic task in airborne laser scanning (ALS) point cloud proc...
Point-cloud classification is one of the most impor- tant and time consuming stages of airborne LiDA...
A method for land-cover classification was proposed based on the fusion of features generated from w...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
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...
3D point cloud classification has wide applications in the field of scene understanding. Point cloud...
LiDAR point clouds are rich in spatial information and can effectively express the size, shape, posi...
Various classification methods have been developed to extract meaningful information from Airborne L...
Airborne laser scanning (ALS) data is one of the most commonly used data for terrain products genera...
Classification of aerial point clouds with high accuracy is significant for many geographical applic...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Exploring automatic point cloud classification method is of great importance to 3D modeling,city lan...
In the practical and professional work of classifying airborne laser scanning (ALS) point clouds, th...
Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-...
The classification of point clouds is a basic task in airborne laser scanning (ALS) point cloud proc...
Point-cloud classification is one of the most impor- tant and time consuming stages of airborne LiDA...
A method for land-cover classification was proposed based on the fusion of features generated from w...