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MCGS-SLAM: A Multi-Camera SLAM Framework Using Gaussian Splatting for High-Fidelity Mapping

About

Recent progress in dense SLAM has primarily targeted monocular setups, often at the expense of robustness and geometric coverage. We present MCGS-SLAM, the first purely RGB-based multi-camera SLAM system built on 3D Gaussian Splatting (3DGS). Unlike prior methods relying on sparse maps or inertial data, MCGS-SLAM fuses dense RGB inputs from multiple viewpoints into a unified, continuously optimized Gaussian map. A multi-camera bundle adjustment (MCBA) jointly refines poses and depths via dense photometric and geometric residuals, while a scale consistency module enforces metric alignment across views using low-rank priors. The system supports RGB input and maintains real-time performance at large scale. Experiments on synthetic and real-world datasets show that MCGS-SLAM consistently yields accurate trajectories and photorealistic reconstructions, usually outperforming monocular baselines. Notably, the wide field of view from multi-camera input enables reconstruction of side-view regions that monocular setups miss, critical for safe autonomous operation. These results highlight the promise of multi-camera Gaussian Splatting SLAM for high-fidelity mapping in robotics and autonomous driving.

Zhihao Cao, Hanyu Wu, Li Wa Tang, Zizhou Luo, Wei Zhang, Marc Pollefeys, Zihan Zhu, Martin R. Oswald• 2025

Related benchmarks

TaskDatasetResultRank
Appearance reconstructionWaymo 8 scenes
PSNR28.45
54
TrackingWaymo--
7
Appearance reconstructionAirSim (Garden scene)
PSNR29.36
6
Appearance reconstructionAirSim Village scene Synthetic
PSNR28.1
6
Appearance reconstructionAirSim Synthetic Dataset (Average)
PSNR28.64
6
Appearance reconstructionAirSim Synthetic (Factory)
PSNR28.37
6
Tracking AccuracyOxford Spires Blenheim Palace
ATE RMSE3.391
5
Tracking AccuracyOxford Spires Christ Church College
ATE RMSE1.551
5
Tracking AccuracyOxford Spires Observatory Quarter
ATE RMSE0.924
5
Tracking AccuracyOxford Spires Bodleian Library
ATE RMSE7.665
4
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