ROMar 11

OnFly: Onboard Zero-Shot Aerial Vision-Language Navigation toward Safety and Efficiency

arXiv:2603.10682v130.21 citationsh-index: 44Has Code
Predicted impact top 15% in RO · last 90 daysOriginality Highly original
AI Analysis

This work addresses safety and efficiency challenges for UAVs in complex 3D environments using natural-language instructions, representing a strong specific gain in the domain.

The paper tackled the problem of unstable decision-making and safety-efficiency trade-offs in zero-shot aerial vision-language navigation for UAVs, achieving a task success rate improvement from 26.4% to 67.8% in simulation and validating real-time deployment in real-world flights.

Aerial vision-language navigation (AVLN) enables UAVs to follow natural-language instructions in complex 3D environments. However, existing zero-shot AVLN methods often suffer from unstable single-stream Vision-Language Model decision-making, unreliable long-horizon progress monitoring, and a trade-off between safety and efficiency. We propose OnFly, a fully onboard, real-time framework for zero-shot AVLN. OnFly adopts a shared-perception dual-agent architecture that decouples high-frequency target generation from low-frequency progress monitoring, thereby stabilizing decision-making. It further employs a hybrid keyframe-recent-frame memory to preserve global trajectory context while maintaining KV-cache prefix stability, enabling reliable long-horizon monitoring with termination and recovery signals. In addition, a semantic-geometric verifier refines VLM-predicted targets for instruction consistency and geometric safety using VLM features and depth cues, while a receding-horizon planner generates optimized collision-free trajectories under geometric safety constraints, improving both safety and efficiency. In simulation, OnFly improves task success from 26.4% to 67.8%, compared with the strongest state-of-the-art baseline, while fully onboard real-world flights validate its feasibility for real-time deployment. The code will be released at https://github.com/Robotics-STAR-Lab/OnFly

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes