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LEADER: Learning Reliable Local-to-Global Correspondences for LiDAR Relocalization

About

LiDAR relocalization has attracted increasing attention as it can deliver accurate 6-DoF pose estimation in complex 3D environments. Recent learning-based regression methods offer efficient solutions by directly predicting global poses without the need for explicit map storage. However, these methods often struggle in challenging scenes due to their equal treatment of all predicted points, which is vulnerable to noise and outliers. In this paper, we propose LEADER, a robust LiDAR-based relocalization framework enhanced by a simple, yet effective geometric encoder. Specifically, a Robust Projection-based Geometric Encoder architecture which captures multi-scale geometric features is first presented to enhance descriptiveness in geometric representation. A Truncated Relative Reliability loss is then formulated to model point-wise ambiguity and mitigate the influence of unreliable predictions. Extensive experiments on the Oxford RobotCar and NCLT datasets demonstrate that LEADER outperforms state-of-the-art methods, achieving 24.1% and 73.9% relative reductions in position error over existing techniques, respectively. The source code is released on https://github.com/JiansW/LEADER.

Jianshi Wu, Minghang Zhu, Dunqiang Liu, Wen Li, Sheng Ao, Siqi Shen, Chenglu Wen, Cheng Wang• 2026

Related benchmarks

TaskDatasetResultRank
LiDAR LocalizationNCLT 2012-02-12
Position Error (m)0.37
21
LiDAR LocalizationNCLT 2012-02-19
Position Error (m)0.27
21
LiDAR LocalizationNCLT 2012-03-31
Position Error (m)0.29
21
LiDAR LocalizationNCLT 2012-05-26
Mean Position Error (m)0.32
21
LiDAR LocalizationNCLT Average
Mean Position Error (m)0.31
21
LiDAR relocalizationQuality-enhanced Oxford RobotCar 15-13-06-37
Mean Position Error (m)0.69
9
LiDAR relocalizationQuality-enhanced Oxford RobotCar (17-13-26-39)
Mean Position Error (m)0.64
9
LiDAR relocalizationOxford RobotCar Quality-enhanced 17-14-03-00
Mean Position Error (m)0.59
9
LiDAR relocalizationQuality-enhanced Oxford RobotCar (18-14-14-42)
Position Error (m)0.62
9
LiDAR relocalizationQuality-enhanced Oxford RobotCar Average
Mean Position Error (m)0.63
9
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