ROMay 11

PriorVLA: Prior-Preserving Adaptation for Vision-Language-Action Models

arXiv:2605.1092590.0
Predicted impact top 10% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For robot manipulation practitioners, PriorVLA offers a parameter-efficient adaptation method that outperforms full fine-tuning, especially under data scarcity and distribution shift.

PriorVLA preserves pretrained priors during adaptation of Vision-Language-Action models, achieving 99.1% average success on LIBERO and 11-point improvement over pi0.5 on RoboTwin 2.0-Hard, with strong gains in few-shot and out-of-distribution settings.

Large-scale pretraining has made Vision-Language-Action (VLA) models promising foundations for generalist robot manipulation, yet adapting them to downstream tasks remains necessary. However, the common practice of full fine-tuning treats pretraining as initialization and can shift broad priors toward narrow training-distribution patterns. We propose PriorVLA, a novel framework that preserves pretrained priors and learns to leverage them for effective adaptation. PriorVLA keeps a frozen Prior Expert as a read-only prior source and trains an Adaptation Expert for downstream specialization. Expert Queries capture scene priors from the pretrained VLM and motor priors from the Prior Expert, integrating both into the Adaptation Expert to guide adaptation. Together, PriorVLA updates only 25% of the parameters updated by full fine-tuning. Across RoboTwin 2.0, LIBERO, and real-world tasks, PriorVLA achieves stronger overall performance than full fine-tuning and state-of-the-art VLA baselines, with the largest gains under out-of-distribution (OOD) and few-shot settings. PriorVLA improves over pi0.5 by 11 points on RoboTwin 2.0-Hard and achieves 99.1% average success on LIBERO. Across eight real-world tasks and two embodiments, PriorVLA reaches 81% in-distribution (ID) and 57% OOD success with standard data. With only 10 demonstrations per task, PriorVLA reaches 48% ID and 32% OOD success, surpassing pi0.5 by 24 and 22 points, respectively.

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