Omni-LIVO: Robust RGB-Colored Multi-Camera Visual-Inertial-LiDAR Odometry via Photometric Migration and ESIKF Fusion
About
Wide field-of-view (FoV) LiDAR sensors provide dense geometry across large environments, but existing LiDAR-inertial-visual odometry (LIVO) systems generally rely on a single camera, limiting their ability to fully exploit LiDAR-derived depth for photometric alignment and scene colorization. We present Omni-LIVO, a tightly coupled multi-camera LIVO system that leverages multi-view observations to comprehensively utilize LiDAR geometric information across extended spatial regions. Omni-LIVO introduces a Cross-View direct alignment strategy that maintains photometric consistency across non-overlapping views, and extends the Error-State Iterated Kalman Filter (ESIKF) with multi-view updates and adaptive covariance. The system is evaluated on public benchmarks and our custom dataset, showing improved accuracy and robustness over state-of-the-art LIVO, LIO, and visual-inertial SLAM baselines. Code and dataset will be released upon publication.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| SLAM | Hilti 2022 | Basement 2 Error0.031 | 10 | |
| SLAM | Hilti 2023 | Error (Floor 0)0.02 | 10 | |
| SLAM | Newer College | Quad Easy Error0.071 | 10 | |
| RGB point cloud generation | stairs sequence | Number of Colored Points1.42e+7 | 4 | |
| RGB point cloud generation | classroom sequence | Number of colored points4.48e+6 | 4 | |
| RGB point cloud generation | basement3 sequence | Number of Colored Points3.35e+7 | 4 | |
| RGB point cloud generation | corridor sequence | Number of Colored Points8.72e+6 | 4 |