3D semantic segmentation is an expanding topic within the field of computer vision, which has received more attention in recent years due to the development of more powerful GPUs and the newpossibilities offered by deep learning techniques. Simultaneously, the amount of available spatial LiDAR data over Sweden has also increased. This work combines these two advances and investigates if a 3D deep learning model for semantic segmentation can learn to detect terrain roughness in airborne LiDAR data. The annotations for terrain roughness used in this work are taken from SGUs 2D soil type map. Other airborne data sources are also used to filter the annotations and see if additional information can boost the performance of the model. Since this...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Various classification methods have been developed to extract meaningful information from Airborne L...
International audienceLiDAR point clouds are receiving a growing interest in remote sensing as they ...
3D semantic segmentation is an expanding topic within the field of computer vision, which has receiv...
Light Detection and Ranging (LiDAR) sensors have many different application areas, from revealing ar...
Inspired by the success of deep learning techniques in dense-label prediction and the increasing ava...
Inspired by the success of deep learning techniques in dense-label prediction and the increasing ava...
Automated semantic segmentation and object detection are of great importance in geospatial data anal...
Precise ground surface topography is crucial for 3D city analysis, digital terrain modeling, natural...
The last decade has seen great advances within the field of artificial intelligence. One of the most...
Autonomous mobile robot has been becoming a promising way for some human-risky tasks, suck like sear...
The roughness spectrum (i.e., the power spectral density) is a derivative of digital terrain models ...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Various classification methods have been developed to extract meaningful information from Airborne L...
International audienceLiDAR point clouds are receiving a growing interest in remote sensing as they ...
3D semantic segmentation is an expanding topic within the field of computer vision, which has receiv...
Light Detection and Ranging (LiDAR) sensors have many different application areas, from revealing ar...
Inspired by the success of deep learning techniques in dense-label prediction and the increasing ava...
Inspired by the success of deep learning techniques in dense-label prediction and the increasing ava...
Automated semantic segmentation and object detection are of great importance in geospatial data anal...
Precise ground surface topography is crucial for 3D city analysis, digital terrain modeling, natural...
The last decade has seen great advances within the field of artificial intelligence. One of the most...
Autonomous mobile robot has been becoming a promising way for some human-risky tasks, suck like sear...
The roughness spectrum (i.e., the power spectral density) is a derivative of digital terrain models ...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...
Ground surface extraction is one of the classic tasks in airborne laser scanning (ALS) point cloud p...
Various classification methods have been developed to extract meaningful information from Airborne L...
International audienceLiDAR point clouds are receiving a growing interest in remote sensing as they ...