LiDAR Iris for Loop-Closure Detection
About
In this paper, a global descriptor for a LiDAR point cloud, called LiDAR Iris, is proposed for fast and accurate loop-closure detection. A binary signature image can be obtained for each point cloud after several LoG-Gabor filtering and thresholding operations on the LiDAR-Iris image representation. Given two point clouds, their similarities can be calculated as the Hamming distance of two corresponding binary signature images extracted from the two point clouds, respectively. Our LiDAR-Iris method can achieve a pose-invariant loop-closure detection at a descriptor level with the Fourier transform of the LiDAR-Iris representation if assuming a 3D (x,y,yaw) pose space, although our method can generally be applied to a 6D pose space by re-aligning point clouds with an additional IMU sensor. Experimental results on five road-scene sequences demonstrate its excellent performance in loop-closure detection.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Place Recognition | KITTI Sequence 08 | F1 Score47.8 | 9 | |
| Place Recognition | KITTI Sequence 02 | F1 Max76.2 | 9 | |
| Place Recognition | KITTI Sequence 06 | F1 max91.3 | 9 | |
| Place Recognition | KITTI Sequence 05 | F1 Max76.8 | 9 | |
| Place Recognition | KITTI Mean across sequences 00-08 | F1 Max0.703 | 9 | |
| Place Recognition | KITTI Sequence 00 | F1 max66.8 | 9 | |
| Place Recognition | KITTI Sequence 07 | F1 max0.629 | 9 |