4.6 Article

Hierarchical Estimation-Based LiDAR Odometry With Scan-to-Map Matching and Fixed-Lag Smoothing

Journal

IEEE TRANSACTIONS ON INTELLIGENT VEHICLES
Volume 8, Issue 2, Pages 1607-1623

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIV.2022.3173665

Keywords

Feature extraction; Laser radar; Smoothing methods; Pose estimation; Point cloud compression; Real-time systems; Three-dimensional displays; LiDAR odometry; hierarchical estimation; scan-to-map matching; fixed-lag smoothing

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This paper proposes a general fixed-lag smoothing module that can be appended to existing LiDAR odometry framework to improve trajectory consistency. A fast scan-to-map matching module based on sparse features is developed to guarantee real-time performance. The feature-centric feature management strategy is adopted in both scan-to-map matching and fixed-lag smoothing modules, making the proposed LiDAR odometry efficient.
LiDAR odometry (LO) has gained popularity in recent years due to accurate depth measurement and robustness to illumination. Typically, the solutions based on scan-to-map matching mainly optimize current pose. To further reduce the accumulated error of pose estimation, the fixed-lag smoothing that optimizes fixed-size poses simultaneously by matching corresponding point features of multiple frames becomes necessary. The integration of fixed-lag smoothing with LO still needs further exploration. In this paper, a general fixed-lag smoothing module is proposed, which can be appended to existing LO framework to improve the consistency of trajectory. Also, a fast scan-to-map matching module based on sparse features is developed to guarantee the real-time performance. Besides, the feature-centric feature management strategy is adopted in both scan-to-map matching and fixed-lag smoothing modules, which makes the proposed LO efficient. On this basis, a hierarchical estimation-based LiDAR odometry is presented, where low-level scan-to-map matching estimates pose of each frame by aligning associated features in the frame and corresponding surrounding map with high efficiency, and high-level fixed-lag smoothing further optimizes keyframe poses in a sliding window by matching associated features among multiple frames with high accuracy. As a result, a fast and accurate pose estimation is achieved, which is verified by experiments on the KITTI dataset, Newer College dataset, and an actual outdoor scenario.

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