ROAIJun 8, 2025

Human-assisted Robotic Policy Refinement via Action Preference Optimization

arXiv:2506.07127v37 citationsh-index: 10Has Code
Originality Highly original
AI Analysis

This work addresses the limitation of VLA models in post-deployment refinement for robotics, enabling iterative improvement in dynamic environments.

The paper tackles the problem of refining Vision-Language-Action (VLA) models for robotics by introducing Action Preference Optimization (APO), which uses human-assisted preference alignment to suppress failure-prone actions and enhance corrective adaptation, resulting in superior generalization and robustness in manipulation tasks.

Establishing a reliable and iteratively refined robotic system is essential for deploying real-world applications. While Vision-Language-Action (VLA) models are widely recognized as the foundation model for such robotic deployment, their reliance on offline expert demonstrations critically limits their capacity for post-deployment refinement. To mitigate this limitation, we introduce Action Preference Optimization (APO), a method designed to refine VLA models by human-assisted preference alignment gathered through interaction with environments. This method begins with a human-robot collaboration framework for reliable failure correction and interaction trajectory collection through human intervention. However, directly leveraging these interaction trajectories for preference optimization is non-trivial due to the challenges of irreversible robotic actions and token distribution mismatch. To solve this, APO proposes an adaptive reweighting algorithm with binary desirability signals derived from interaction, empowering VLA models effectively suppress failure-prone actions while enhancing corrective action adaptation. Ultimately, APO equips VLA models with the crucial capability to learn from failure, paving the way for their iterative refinement and reliable deployment in dynamic environments. The experiments conducted in simulation and real-world scenarios prove superior generalization and robustness of our human-assisted framework across a variety of manipulation tasks. We believe this work could bring insights for efficient and stable optimization of VLA models through human-robot collaboration. The code and dataset are released at https://github.com/GeWu-Lab/Action-Preference-Optimization

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