TANGO: Traversability-Aware Navigation with Local Metric Control for Topological Goals
About
Visual navigation in robotics traditionally relies on globally-consistent 3D maps or learned controllers, which can be computationally expensive and difficult to generalize across diverse environments. In this work, we present a novel RGB-only, object-level topometric navigation pipeline that enables zero-shot, long-horizon robot navigation without requiring 3D maps or pre-trained controllers. Our approach integrates global topological path planning with local metric trajectory control, allowing the robot to navigate towards object-level sub-goals while avoiding obstacles. We address key limitations of previous methods by continuously predicting local trajectory using monocular depth and traversability estimation, and incorporating an auto-switching mechanism that falls back to a baseline controller when necessary. The system operates using foundational models, ensuring open-set applicability without the need for domain-specific fine-tuning. We demonstrate the effectiveness of our method in both simulated environments and real-world tests, highlighting its robustness and deployability. Our approach outperforms existing state-of-the-art methods, offering a more adaptable and effective solution for visual navigation in open-set environments. The source code is made publicly available: https://github.com/podgorki/TANGO.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Visual Navigation | HM3D Shortcut v3 | Success Rate (SR)34.29 | 9 | |
| Visual Navigation | HM3D Alt Goal v3 | SR24.07 | 9 | |
| Visual Navigation | HM3D Reverse v3 | Success Rate (SR)31.48 | 5 | |
| Visual Navigation | HM3D Imitate v3 | Success Rate (SR)48.15 | 5 | |
| Object Goal Navigation | HM3D Imitate setting v3 | SR64.81 | 4 | |
| Object Goal Navigation | HM3D Reverse setting v3 | SR55.56 | 4 |