A Robust Pose Graph Approach for City Scale LiDAR Mapping

Oct 1, 2018·
Sheng Yang
Sheng Yang
,
Xiaoling Zhu
,
Xing Nian
,
Lu Feng
,
Xiaozhi Qu
,
Teng Ma
· 0 min read
Abstract
This paper presents a method for reconstructing globally consistent 3D High-Definition (HD) maps at city scale. Current approaches for eliminating cumulative drift are mainly based on the pose graph optimization under the constraint of scan-matching factors. The misaligned edges in the graph may have negative impacts on the results. To address this problem and further handle inconsistency caused by multi-task acquisitions in urban environments, we introduce a refined structure of the factor graph considering systematical initialization bias, where the scan-matching factors are twice validated through a novel classifier and a robust optimization strategy. In addition, we incorporate a multi-hypothesis extended Kalman filter (MH-EKF) to remove dynamic objects. Quantitative experimental results demonstrate that the proposed method outperforms state-of-the-art techniques in terms of map quality.
Type
Publication
IEEE/RSJ International Conference on Intelligent Robots and Systems