A major challenge in the application of state-of-the-art deep learning methods to the classification of mobile lidar data is the lack of sufficient training samples for different object categories. The transfer learning technique based on pre-trained networks, which is widely used in deep learning for image classification, is not directly applicable to point clouds, because pre-trained networks trained by a large number of samples from multiple sources are not available. To solve this problem, we design a framework incorporating a state-of-the-art deep learning network, i.e. VoxNet, and propose an extended Multiclass TrAdaBoost algorithm, which can be trained with complementary training samples from other source datasets to improve the clas...
Improving the effectiveness of spatial shape features classification from 3D lidar data is very rele...
Improving the effectiveness of spatial shape features classification from 3D lidar data is very rele...
Point-cloud classification is one of the most impor- tant and time consuming stages of airborne LiDA...
The classification of mobile Lidar data is challenged by the complexity of objects in the point clou...
© 2020 Hanxian HeMobile lidar data have been widely used in building 3D models, road mapping and inv...
Automatic and accurate classification is a fundamental problem to the analysis and modeling of LiDAR...
A considerable amount of annotated training data is necessary to achieve state-of-the-art performanc...
Abstract. Mobile lidar point clouds are commonly used for 3d mapping of road environments as they pr...
In recent years, there has been a significant improvement in the detection, identification and class...
Recently, light detection and ranging (LiDAR)-based mobile mapping systems (MMS) have been utilized ...
Classifying objects within aerial Light Detection and Ranging (LiDAR) data is an essential task to w...
International audience3D point clouds acquired with lidars are an important source of data for the c...
International audienceExisting neural network-based object detection approaches process LiDAR point ...
The use of Transformer-based networks has been proposed for the processing of general point clouds. ...
Various classification methods have been developed to extract meaningful information from Airborne L...
Improving the effectiveness of spatial shape features classification from 3D lidar data is very rele...
Improving the effectiveness of spatial shape features classification from 3D lidar data is very rele...
Point-cloud classification is one of the most impor- tant and time consuming stages of airborne LiDA...
The classification of mobile Lidar data is challenged by the complexity of objects in the point clou...
© 2020 Hanxian HeMobile lidar data have been widely used in building 3D models, road mapping and inv...
Automatic and accurate classification is a fundamental problem to the analysis and modeling of LiDAR...
A considerable amount of annotated training data is necessary to achieve state-of-the-art performanc...
Abstract. Mobile lidar point clouds are commonly used for 3d mapping of road environments as they pr...
In recent years, there has been a significant improvement in the detection, identification and class...
Recently, light detection and ranging (LiDAR)-based mobile mapping systems (MMS) have been utilized ...
Classifying objects within aerial Light Detection and Ranging (LiDAR) data is an essential task to w...
International audience3D point clouds acquired with lidars are an important source of data for the c...
International audienceExisting neural network-based object detection approaches process LiDAR point ...
The use of Transformer-based networks has been proposed for the processing of general point clouds. ...
Various classification methods have been developed to extract meaningful information from Airborne L...
Improving the effectiveness of spatial shape features classification from 3D lidar data is very rele...
Improving the effectiveness of spatial shape features classification from 3D lidar data is very rele...
Point-cloud classification is one of the most impor- tant and time consuming stages of airborne LiDA...