Vision-Language-Action (VLA) models exhibit strong generalization in robotic manipulation, yet reinforcement learning (RL) fine-tuning often degrades robustness under spatial distribution shifts. For flow-matching VLA policies, this degradation is closely associated with the erosion of spatial inductive bias during RL adaptation, as sparse rewards and spatially agnostic exploration increasingly favor short-horizon visual cues. To address this issue, we propose SA-VLA, a spatially-aware RL adaptation framework that preserves spatial grounding during policy optimization by aligning representation learning, reward design, and exploration with task geometry. SA-VLA fuses implicit spatial representations with visual tokens, provides dense rewards that reflect geometric progress, and employs SCAN, a spatially-conditioned annealed exploration strategy tailored to flow-matching dynamics. Across challenging multi-object and cluttered manipulation benchmarks, SA-VLA enables stable RL fine-tuning and improves zero-shot spatial generalization, yielding more robust and transferable behaviors. Code and project page are available at https://xupan.top/Projects/savla.
SA-VLA: Spatially-Aware Flow-Matching for Vision-Language-Action Reinforcement Learning
SA-VLA is a spatially-aware reinforcement learning framework that preserves spatial inductive bias in vision-language-action models through aligned representation learning, dense reward design, and spatially-conditioned exploration strategies.
- Year
- 2026
- Venue
- arXiv 2026
- Stars
- 4
- Authors
- 9
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2602.00743ARXIV-DEFAULT
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