Intelligent Point Cloud Processing, Sensing and Understanding
Materialtyp:
ArtikelUtgivningsinformation: MDPI - Multidisciplinary Digital Publishing Institute 2024Beskrivning: 1 electronic resource (208 p.)Innehållstyp: - text
- computer
- online resource
- 9783725802418
- 9783725802425
- Technology, Engineering, Agriculture, Industrial processes
- Technology: general issues
- Point cloud acquisition from laser scanners
- and oblique as well as satellite imagery
- and quality assessment
- camera phone images
- compression
- deep learning for point cloud processing
- fusion of multimodal point clouds
- high-performance computing for large-scale point clouds
- image-based point cloud processing
- industrial applications with large-scale point clouds
- modeling of LiDAR
- object detection
- panoramas
- point cloud registration
- segmentation
- semantic labelling
- stereo vision
Open Access Unrestricted online access star
Point clouds are deemed to be one of the foundational pillars in representing the 3D digital world, despite irregular topologies among discrete points. Recently, advancements in sensor technologies that acquire point cloud data for flexible and scalable geometric representation have paved the way for the development of new ideas, methodologies, and solutions in countless remote sensing applications. State-of-the-art sensors are capable of capturing and describing objects in a scene by using dense point clouds from various platforms (satellites, aerial, UAVs, vehicle-borne, backpacks, handheld, and static terrestrial), perspectives (nadir, oblique, and side view), spectra (multispectral), and granularity (point density and completeness). Meanwhile, the ever-expanding application areas of point cloud processing have already covered not only conventional domains in geospatial analysis but also manufacturing, civil engineering, construction, transportation, ecology, forestry, mechanical engineering, etc. Readers can learn about the latest innovative technologies for generating, processing, and analyzing point cloud data from these contributions, which helps to understand the challenges faced by point cloud data and develop new 3D applications.
Creative Commons Licence cc by-nc-nd cc https://creativecommons.org/licenses/by-nc-nd/4.0/
eng
Freely available e-book