Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-crafted features that make the network challenging, more computationally intensive and vulnerable to overfitting. Furthermore, reliance on empirically-based feature dimensionality reduction may lead to misclassification. In contrast, efficient feature management can reduce storage and computational complexities, builds better classifiers, and improves overall performance. Principal Component Analysis (PCA) is a well-known dimension reduction technique that has been used for feature extraction. This paper presents a two-step PCA based feature extraction algorithm that employs a variant of feature-based PointNet (Qi et al., 2017a) for point clo...
In various applications of airborne laser scanning (ALS), the classification of the point cloud is a...
Airborne laser scanning (ALS) point cloud classification is a necessary step for understanding 3-D s...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...
Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-...
Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-...
Precise ground surface topography is crucial for 3D city analysis, digital terrain modeling, natural...
Recent advances in Light Detection and Ranging (LiDAR) sensors have led to an increasing amount of l...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Machine learning has made phenomenal progress in the past decades. This work has a focus on the chal...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
LiDAR point clouds are rich in spatial information and can effectively express the size, shape, posi...
Point clouds are one of the most widely used data formats produced by depth sensors. There is a lot ...
Recent advancements in self-driving cars, robotics, and remote sensing have widened the range of app...
3D point clouds acquired by laser scanning and other techniques are difficult to interpret because o...
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...
Airborne laser scanning (ALS) point cloud classification is a necessary step for understanding 3-D s...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...
Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-...
Most deep learning (DL) methods that are not end-to-end use several multi-scale and multi-type hand-...
Precise ground surface topography is crucial for 3D city analysis, digital terrain modeling, natural...
Recent advances in Light Detection and Ranging (LiDAR) sensors have led to an increasing amount of l...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Machine learning has made phenomenal progress in the past decades. This work has a focus on the chal...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
LiDAR point clouds are rich in spatial information and can effectively express the size, shape, posi...
Point clouds are one of the most widely used data formats produced by depth sensors. There is a lot ...
Recent advancements in self-driving cars, robotics, and remote sensing have widened the range of app...
3D point clouds acquired by laser scanning and other techniques are difficult to interpret because o...
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...
Airborne laser scanning (ALS) point cloud classification is a necessary step for understanding 3-D s...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...