ROMar 26

$π$, But Make It Fly: Physics-Guided Transfer of VLA Models to Aerial Manipulation

arXiv:2603.2503888.02 citationsh-index: 22
AI Analysis

This work addresses the problem of adapting foundation models for aerial manipulation, which is incremental as it builds on existing VLA models with specific enhancements.

The paper tackles the challenge of transferring Vision-Language-Action models from fixed-base manipulators to aerial platforms, achieving a 50% success rate in pick-and-place tasks with a physics-guided method, up from 23% without it.

Vision-Language-Action (VLA) models such as $π_0$ have demonstrated remarkable generalization across diverse fixed-base manipulators. However, transferring these foundation models to aerial platforms remains an open challenge due to the fundamental mismatch between the quasi-static dynamics of fixed-base arms and the underactuated, highly dynamic nature of flight. In this work, we introduce AirVLA, a system that investigates the transferability of manipulation-pretrained VLAs to aerial pick-and-place tasks. We find that while visual representations transfer effectively, the specific control dynamics required for flight do not. To bridge this "dynamics gap" without retraining the foundation model, we introduce a Payload-Aware Guidance mechanism that injects payload constraints directly into the policy's flow-matching sampling process. To overcome data scarcity, we further utilize a Gaussian Splatting pipeline to synthesize navigation training data. We evaluate our method through a cumulative 460 real-world experiments which demonstrate that this synthetic data is a key enabler of performance, unlocking 100% success in navigation tasks where directly fine-tuning on teleoperation data alone attains 81% success. Our inference-time intervention, Payload-Aware Guidance, increases real-world pick-and-place task success from 23% to 50%. Finally, we evaluate the model on a long-horizon compositional task, achieving a 62% overall success rate. These results suggest that pre-trained manipulation VLAs, with appropriate data augmentation and physics-informed guidance, can transfer to aerial manipulation and navigation, as well as the composition of these tasks.

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

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