ROMay 10

Learning When to Jump for Off-road Navigation

arXiv:2602.0087777.2h-index: 5
AI Analysis

For off-road navigation, this work addresses the overlooked problem of velocity-dependent terrain cost, enabling safer and more efficient traversal of obstacles like ditches.

The paper introduces Motion-aware Traversability (MAT) to model terrain cost as a function of velocity, enabling agile off-road navigation that plans jumps over obstacles. In evaluations, MAT reduces path detours by 75% while maintaining safety across challenging terrains.

Low speed does not always guarantee safety in off-road driving. For instance, crossing a ditch may be risky at a low speed due to the risk of getting stuck, yet safe at a higher speed with a controlled, accelerated jump. Achieving such behavior requires path planning that explicitly models complex motion dynamics, whereas existing methods often neglect this aspect and plan solely based on positions or a fixed velocity. To address this gap, we introduce Motion-aware Traversability (MAT) representation to explicitly model terrain cost conditioned on actual robot motion. Instead of assigning a single scalar score for traversability, MAT models each terrain region as a Gaussian function of velocity. During online planning, we decompose the terrain cost computation into two stages: (1) predict terrain-dependent Gaussian parameters from perception in a single forward pass, (2) efficiently update terrain costs for new velocities inferred from current dynamics by evaluating these functions without repeated inference. We develop a system that integrates MAT to enable agile off-road navigation and evaluate it in both simulated and real-world environments with various obstacles. Results show that MAT achieves real-time efficiency and enhances the performance of off-road navigation, reducing path detours by 75% while maintaining safety across challenging terrains.

Foundations

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