MGSfM: Multi-Camera Geometry Driven Global Structure-from-Motion

摘要

Multi-camera systems are increasingly vital in the environmental perception of autonomous vehicles and robotics. Their physical configuration offers inherent fixed relative pose constraints that benefit Structure-from-Motion (SfM). However, traditional global SfM systems struggle with robustness due to their optimization framework. We propose a novel global motion averaging framework for multi-camera systems, featuring two core components: a decoupled rotation averaging module and a hybrid translation averaging module. Our rotation averaging employs a hierarchical strategy by first estimating relative rotations within rigid camera units and then computing global rigid unit rotations. To enhance the robustness of translation averaging, we incorporate both camera-to-camera and camera-to-point constraints to initialize camera positions and 3D points with a convex distance-based objective function and refine them with an unbiased non-bilinear angle-based objective function. Experiments on large-scale datasets show that our system matches or exceeds incremental SfM accuracy while significantly improving efficiency. Our framework outperforms existing global SfM methods, establishing itself as a robust solution for real-world multi-camera SfM applications. We will share our system as an open-source implementation.

出版物
International Conference on Computer Vision, ICCV 2025
Peilin Tao
陶沛霖
博士研究生 (2023-至今)
Hainan Cui
崔海楠
副研究员, 硕导
Diantao Tu
屠殿韬
助理研究员
Shuhan Shen
申抒含
研究员, 博导