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Omni-LIVO: Robust RGB-Colored Multi-Camera Visual-Inertial-LiDAR Odometry via Photometric Migration and ESIKF Fusion

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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.

Yinong Cao, Chenyang Zhang, Xin He, Yuwei Chen, Chengyu Pu, Bingtao Wang, Kaile Wu, Shouzheng Zhu, Fei Han, Shijie Liu, Chunlai Li, Jianyu Wang• 2025

Related benchmarks

TaskDatasetResultRank
SLAMHilti 2022
Basement 2 Error0.031
10
SLAMHilti 2023
Error (Floor 0)0.02
10
SLAMNewer College
Quad Easy Error0.071
10
RGB point cloud generationstairs sequence
Number of Colored Points1.42e+7
4
RGB point cloud generationclassroom sequence
Number of colored points4.48e+6
4
RGB point cloud generationbasement3 sequence
Number of Colored Points3.35e+7
4
RGB point cloud generationcorridor sequence
Number of Colored Points8.72e+6
4
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