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PointLoc: Deep Pose Regressor for LiDAR Point Cloud Localization

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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.

Wei Wang, Bing Wang, Peijun Zhao, Changhao Chen, Ronald Clark, Bo Yang, Andrew Markham, Niki Trigoni• 2020

Related benchmarks

TaskDatasetResultRank
LiDAR LocalizationOxford (15-13-06-37)
Mean Position Error (m)10.75
23
LiDAR LocalizationOxford (17-13-26-39)
Mean Position Error (m)11.07
23
LiDAR LocalizationOxford (17-14-03-00)
Mean Position Error (m)11.53
23
LiDAR LocalizationQEOxford Average
Mean Position (m)10.79
23
Pose RegressionOxford Radar Full-7
Mean Translation Error (m)9.81
13
Pose RegressionOxford Radar Full-8
Mean Translation Error (m)11.51
13
Pose RegressionOxford Radar Full-6
Mean Translation Error (m)13.81
13
Pose RegressionOxford Radar Full-9
Mean Translation Error (m)9.51
13
LiDAR LocalizationNCLT 2012-02-12
Position Error (m)7.23
12
LiDAR LocalizationNCLT 2012-05-26
Mean Position Error (m)9.55
12
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