LiDAR Point--to--point Correspondences for Rigorous Registration of Kinematic Scanning in Dynamic Networks
Aur\'elien Brun, Davide Antonio Cucci, Jan Skaloud

TL;DR
This paper introduces a novel trajectory adjustment method for LiDAR point cloud registration in kinematic scanning, utilizing reliable 3D point correspondences and a Dynamic Network approach to enhance accuracy under challenging conditions.
Contribution
It presents a new framework combining 3D point correspondences with a Dynamic Network for improved LiDAR registration in dynamic environments.
Findings
Enhanced registration accuracy in airborne laser scanning.
Effective correspondence selection across diverse geometries.
Robust performance under GNSS outage conditions.
Abstract
With the objective of improving the registration of LiDAR point clouds produced by kinematic scanning systems, we propose a novel trajectory adjustment procedure that leverages on the automated extraction of selected reliable 3D point--to--point correspondences between overlapping point clouds and their joint integration (adjustment) together with all raw inertial and GNSS observations. This is performed in a tightly coupled fashion using a Dynamic Network approach that results in an optimally compensated trajectory through modeling of errors at the sensor, rather than the trajectory, level. The 3D correspondences are formulated as static conditions within this network and the registered point cloud is generated with higher accuracy utilizing the corrected trajectory and possibly other parameters determined within the adjustment. We first describe the method for selecting…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Remote Sensing and LiDAR Applications · Robotics and Sensor-Based Localization
