OpenNavMap: Structure-Free Topometric Mapping via Large-Scale Collaborative Localization
About
Scalable and maintainable map representations are fundamental to enabling large-scale visual navigation and facilitating the deployment of robots in real-world environments. While collaborative localization across multi-session mapping enhances efficiency, traditional structure-based methods struggle with high maintenance costs and fail in feature-less environments or under significant viewpoint changes typical of crowd-sourced data. To address this, we propose OPENNAVMAP, a lightweight, structure-free topometric system leveraging 3D geometric foundation models for on-demand reconstruction. Our method unifies dynamic programming-based sequence matching, geometric verification, and confidence-calibrated optimization to robust, coarse-to-fine submap alignment without requiring pre-built 3D models. Evaluations on the Map-Free benchmark demonstrate superior accuracy over structure-from-motion and regression baselines, achieving an average translation error of 0.62m. Furthermore, the system maintains global consistency across 15km of multi-session data with an absolute trajectory error below 3m for map merging. Finally, we validate practical utility through 12 successful autonomous image-goal navigation tasks on simulated and physical robots. Code and datasets will be publicly available in https://rpl-cs-ucl.github.io/OpenNavMap_page.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Topological Localization | R2 Ref. Sequence 0 | Precision@198 | 24 | |
| Topological Localization | R2 Ref. Sequence 1 | Precision@10.88 | 24 | |
| Topological Localization | R2 Ref. Sequence 2 | Precision@192 | 24 | |
| Topological Localization | R2 Ref. Sequence 3 | Precision@198 | 24 |