PointLoc: Deep Pose Regressor for LiDAR Point Cloud Localization
About
In this paper, we present a novel end-to-end learning-based LiDAR relocalization framework, termed PointLoc, which infers 6-DoF poses directly using only a single point cloud as input, without requiring a pre-built map. Compared to RGB image-based relocalization, LiDAR frames can provide rich and robust geometric information about a scene. However, LiDAR point clouds are unordered and unstructured making it difficult to apply traditional deep learning regression models for this task. We address this issue by proposing a novel PointNet-style architecture with self-attention to efficiently estimate 6-DoF poses from 360{\deg} LiDAR input frames.Extensive experiments on recently released challenging Oxford Radar RobotCar dataset and real-world robot experiments demonstrate that the proposedmethod can achieve accurate relocalization performance.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| LiDAR Localization | Oxford (15-13-06-37) | Mean Position Error (m)10.75 | 23 | |
| LiDAR Localization | Oxford (17-13-26-39) | Mean Position Error (m)11.07 | 23 | |
| LiDAR Localization | Oxford (17-14-03-00) | Mean Position Error (m)11.53 | 23 | |
| LiDAR Localization | QEOxford Average | Mean Position (m)10.79 | 23 | |
| Pose Regression | Oxford Radar Full-7 | Mean Translation Error (m)9.81 | 13 | |
| Pose Regression | Oxford Radar Full-8 | Mean Translation Error (m)11.51 | 13 | |
| Pose Regression | Oxford Radar Full-6 | Mean Translation Error (m)13.81 | 13 | |
| Pose Regression | Oxford Radar Full-9 | Mean Translation Error (m)9.51 | 13 | |
| LiDAR Localization | NCLT 2012-02-12 | Position Error (m)7.23 | 12 | |
| LiDAR Localization | NCLT 2012-05-26 | Mean Position Error (m)9.55 | 12 |