DualQuat-LOAM: LiDAR Odometry and Mapping parametrized on Dual Quaternions
This paper reports on a novel method for LiDAR odometry estimation, which completely parameterizes the system with dual quaternions. To accomplish this, the features derived from the point cloud, including edges, surfaces, and Stable Triangle Descriptor (STD), along with the optimization problem, ar...
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Zusammenfassung: | This paper reports on a novel method for LiDAR odometry estimation, which
completely parameterizes the system with dual quaternions. To accomplish this,
the features derived from the point cloud, including edges, surfaces, and
Stable Triangle Descriptor (STD), along with the optimization problem, are
expressed in the dual quaternion set. This approach enables the direct
combination of translation and orientation errors via dual quaternion
operations, greatly enhancing pose estimation, as demonstrated in comparative
experiments against other state-of-the-art methods. Our approach reduced drift
error compared to other LiDAR-only-odometry methods, especially in scenarios
with sharp curves and aggressive movements with large angular displacement.
DualQuat-LOAM is benchmarked against several public datasets. In the KITTI
dataset it has a translation and rotation error of 0.79% and 0.0039{\deg}/m,
with an average run time of 53 ms. |
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DOI: | 10.48550/arxiv.2410.13541 |