Machine Learning for LiDAR Point Cloud Analysis
A special issue of Remote Sensing (ISSN 2072-4292). This special issue belongs to the section "Remote Sensing Image Processing".
Deadline for manuscript submissions: closed (31 March 2023) | Viewed by 17945
Special Issue Editors
Interests: LiDAR; 3D scene perception and analysis; environmental remote sensing; sensor fusion
Special Issues, Collections and Topics in MDPI journals
Interests: computer vision; robot target recognition; 3D reconstruction of large scene; machine learning
Interests: LiDAR remote sensing; forest inventory; point cloud processing
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
LiDAR, as an active remote sensing technology, can automatically and quickly establish 3D digital world as a point cloud. Recently, developments in LiDAR sensors and various platforms (including satellite, aerial, UAV, vehicle-borne, backpack, handheld, and static terrestrial) have greatly promoted the application of LiDAR in various fields, such as 3D real scene modeling, digital twins, agriculture and forestry monitoring, AR, autonomous driving, powerline inspection, and remote sensing archaeology. LiDAR point cloud analysis or processing, including point cloud registration or mapping, filtering, segmentation and classification, 3D modeling, and visualization, is a fundamental prerequisite for rigorously applying LiDAR point clouds to these fields. Diverse algorithms have since then been made available in the forms of data-driven, model-driven, or hybrid approaches to analyze and explore LiDAR point clouds. The latest techniques in machine learning and deep learning have even enabled us to extract semantic information from LiDAR point clouds in a more intelligent and effective way and further expand the application scope of LiDAR point clouds.
The Special Issue aims at contributions that focus on LiDAR point cloud analysis using machine learning (or deep learning) techniques. We are particularly interested in original papers that address innovative techniques and algorithms for generating, handling, and analyzing LiDAR point clouds, challenges in dealing with point cloud data in emerging remote sensing applications, and which unfold new applications for LiDAR point clouds. Additionally, we look forward to seeing new algorithms, techniques, and applications in various fields of LiDAR point clouds.
Dr. Wei Yao
Prof. Dr. Wenbing Tao
Dr. Jie Shao
Guest Editors
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Keywords
- LiDAR point cloud acquisition from various platforms
- machine learning (or deep learning) for LiDAR point cloud processing
- point cloud registration and filtering, fusion of multisource LiDAR point clouds
- feature extraction, object detection, semantic labeling, and change detection
- indoor modeling, BIM, and semantic urban GeoBIM from LiDAR point clouds
- 3D real scene, digital twins from LiDAR point clouds
- object classification and recognition from LiDAR point clouds
- industrial applications with large-scale aerial LiDAR point clouds
- high-definition map construction from mobile LiDAR point clouds for autonomous driving
- agriculture and forestry monitoring based on LiDAR point clouds
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