Mesh-LOAM: Real-time Mesh-Based LiDAR Odometry and Mapping
About
Despite having achieved real-time performance in mesh construction, most of the current LiDAR odometry and meshing methods may struggle to deal with complex scenes due to relying on explicit meshing schemes. They are usually sensitive to noise. To overcome these limitations, we propose a real-time mesh-based LiDAR odometry and mapping approach for large-scale scenes via implicit reconstruction and a parallel spatial-hashing scheme. To efficiently reconstruct triangular meshes, we suggest an incremental voxel meshing method that updates every scan by traversing each point once and compresses space via a scalable partition module. By taking advantage of rapid accessing triangular meshes at any time, we design point-to-mesh odometry with location and feature-based data association to estimate the poses between the incoming point clouds and the recovered triangular meshes. The experimental results on four datasets demonstrate the effectiveness of our proposed approach in generating accurate motion trajectories and environmental mesh maps.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| LiDAR Odometry | KITTI-odometry (sequences 00-10) | -- | 48 | |
| Visual Odometry | KITTI | KITTI Seq 03 Error0.5 | 37 | |
| LiDAR Odometry | MaiCity (Sequence 01) | ATE RMSE (cm)1.6 | 8 |