HPC solutions for ALS point cloud processing in pathfinding and powerline detection and characterization
- Yermo García, Miguel
- Francisco Fernández Rivera Director
- Tomás F. Pena Director
Universidade de defensa: Universidade de Santiago de Compostela
Fecha de defensa: 29 de xullo de 2024
- Margarita Amor Presidente/a
- Vicente José Blanco Pérez Secretario/a
- Eetu Puttonen Vogal
Tipo: Tese
Resumo
This thesis addresses the processing of LiDAR point clouds using high-performance computing techniques. By employing efficient data structures and the shared-memory parallelization paradigm, two methods have been implemented for point cloud analysis. First, a path planning algorithm is used to find the route between any two points within an airborne LiDAR point cloud, considering terrain features such as trafficability, slope, roughness, presence of vegetation, and roads. It is guaranteed that the found route is optimal in terms of cost. Second, the problem of detecting and characterizing powerlines in general-purpose airborne LiDAR point clouds has been tackled. The method can detect multiple powerlines in a given scene with a precision of 97.2%, and it can model the conductors with a mean error of 0.14 meters.