Model Model Computation Policy Reward Group Policy Update NoisyRollout: Reinforcing Visual Reasoning with Data Augmentation

Neural Information Processing Systems 

Recent advances in reinforcement learning (RL) have strengthened the reasoning capabilities of vision-language models (VLMs). However, enhancing policy exploration to better scale test-time compute remains largely underexplored. In addition, VLMs continue to struggle with imperfect visual perception, which in turn affects the subsequent reasoning process. We introduce NoisyRollout, a simple yet effective data augmentation method that addresses these issues by mixing training trajectories from both clean and moderately distorted images. This approach injects perceptual diversity, encouraging better policy exploration and leading to more robust reasoning. A noise annealing schedule gradually reduces distortion strength, aiding exploration early in training while ensuring later stability. Crucially, our method is easy-to-adopt--requiring no additional training cost and no modifications to the RL objective. Extensive experiments on 2distinct training datasets demonstrate that NoisyRollout achieves state-of-the-art performance among opensource RL-tuned models across 5 out-of-domain reasoning and perception benchmarks.

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