首页 /研究 /Learning to Localize Reference Trajectories in Image-Space for Visual Navigation
PERCEPTION

Learning to Localize Reference Trajectories in Image-Space for Visual Navigation

Finn Lukas Busch, Matti Vahs, Quantao Yang, Jesús Gerardo Ortega Peimbert, Yixi Cai, Jana Tumova, Olov Andersson

发表年份
2026
访问权限
开放获取

摘要

We present LoTIS, a model for visual navigation that provides robot-agnostic image-space guidance by localizing a reference RGB trajectory in the robot's current view, without requiring camera calibration, poses, or robot-specific training. Instead of predicting actions tied to specific robots, we predict the image-space coordinates of the reference trajectory as they would appear in the robot's current view. This creates robot-agnostic visual guidance that easily integrates with local planning. Consequently, our model's predictions provide guidance zero-shot across diverse embodiments. By decoupling perception from action and learning to localize trajectory points rather than imitate behavioral priors, we enable a cross-trajectory training strategy for robustness to viewpoint and camera changes. We outperform state-of-the-art methods by 20-50 percentage points in success rate on conventional forward navigation, achieving 94-98% success rate across diverse sim and real environments. Furthermore, we achieve over 5x improvements on challenging tasks where baselines fail, such as backward traversal. The system is straightforward to use: we show how even a video from a phone camera directly enables different robots to navigate to any point on the trajectory. Videos, demo, and code are available at https://finnbusch.com/lotis.

关键词

cs.RO

相关论文

查看 PERCEPTION 分类全部论文