Home Science A Decentralized LiDAR-SLAM System with Certifiably...
Science

A Decentralized LiDAR-SLAM System with Certifiably Optimal Pose Graph Optimization

Key Points

Announce Type: replace Abstract: Decentralized multi-robot LiDAR-SLAM is essential for collaborative missions but faces significant challenges in maintaining global consistency. Existing frameworks predominantly rely on local-search optimization or one-time coordinate alignment, which are prone to suboptimal convergence and long-term inconsistency, especially in large-scale or degenerate environments. To address these limitations, this paper presents the first decentralized LiDAR-SLAM system...

arXiv:2605.25051v2 Announce Type: replace Abstract: Decentralized multi-robot LiDAR-SLAM is essential for collaborative missions but faces significant challenges in maintaining global consistency. Existing frameworks predominantly rely on local-search optimization or one-time coordinate alignment, which are prone to suboptimal convergence and long-term inconsistency, especially in large-scale or degenerate environments. To address these limitations, this paper presents the first decentralized LiDAR-SLAM system that integrates a state-of-the-art certifiably optimal Pose Graph Optimization (PGO) backend. By leveraging the Riemannian Block Coordinate Descent (RBCD) algorithm, our system ensures globally consistent trajectory estimation without requiring accurate initial guesses. Experimental results demonstrate that the proposed framework achieves superior robustness, improving trajectory RMSE by up to 48.9% compared to the state-of-the-art DiSCo-SLAM.
Optimal Pose Graph Optimization arXiv:2605.25051v2 (ORG) PGO (ORG) the Riemannian Block Coordinate Descent (ORG) RBCD (ORG) RMSE (ORG)
Originally published by arXiv CS Read original →