Real-Time Verification of Embodied Reasoning for Generative Skill Acquisition
Bo Yue, Shuqi Guo, Kaiyu Hu, Chujiao Wang, Benyou Wang, Kui Jia, Guiliang Liu

TL;DR
This paper introduces VERGSA, a verification-based framework for embodied skill learning that enhances success rates and reduces manual reward engineering in complex 3D environments.
Contribution
It pioneers the integration of real-time verification principles into embodied skill acquisition, creating a scalable, automated training dataset and improving success metrics.
Findings
Task success rates increased by 21% on average.
Verification model improved success by 24% on new tasks.
Outperformed LLM-based baselines in verification quality.
Abstract
Generative skill acquisition enables embodied agents to actively learn a scalable and evolving repertoire of control skills, crucial for the advancement of large decision models. While prior approaches often rely on supervision signals from generalist agents (e.g., LLMs), their effectiveness in complex 3D environments remains unclear; exhaustive evaluation incurs substantial computational costs, significantly hindering the efficiency of skill learning. Inspired by recent successes in verification models for mathematical reasoning, we propose VERGSA (Verifying Embodied Reasoning in Generative Skill Acquisition), a framework that systematically integrates real-time verification principles into embodied skill learning. VERGSA establishes 1) a seamless extension from verification of mathematical reasoning into embodied learning by dynamically incorporating contextually relevant tasks into…
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Taxonomy
TopicsRobot Manipulation and Learning · Multimodal Machine Learning Applications · Reinforcement Learning in Robotics
