Contact Coverage-Guided Exploration for General-Purpose Dexterous Manipulation
AI 摘要
提出了一种基于接触覆盖引导探索的通用灵巧操作方法,提高了训练效率和成功率。
主要贡献
- 提出了一种通用的接触覆盖引导探索(CCGE)方法
- 设计了基于计数的接触覆盖奖励,鼓励探索新的接触模式
- 设计了基于能量的可达性奖励,引导agent探索欠探索的接触区域
方法论
使用深度强化学习,通过接触状态表示和接触计数器,结合接触覆盖奖励和可达性奖励,引导agent进行探索。
原文摘要
Deep Reinforcement learning (DRL) has achieved remarkable success in domains with well-defined reward structures, such as Atari games and locomotion. In contrast, dexterous manipulation lacks general-purpose reward formulations and typically depends on task-specific, handcrafted priors to guide hand-object interactions. We propose Contact Coverage-Guided Exploration (CCGE), a general exploration method designed for general-purpose dexterous manipulation tasks. CCGE represents contact state as the intersection between object surface points and predefined hand keypoints, encouraging dexterous hands to discover diverse and novel contact patterns, namely which fingers contact which object regions. It maintains a contact counter conditioned on discretized object states obtained via learned hash codes, capturing how frequently each finger interacts with different object regions. This counter is leveraged in two complementary ways: (1) to assign a count-based contact coverage reward that promotes exploration of novel contact patterns, and (2) an energy-based reaching reward that guides the agent toward under-explored contact regions. We evaluate CCGE on a diverse set of dexterous manipulation tasks, including cluttered object singulation, constrained object retrieval, in-hand reorientation, and bimanual manipulation. Experimental results show that CCGE substantially improves training efficiency and success rates over existing exploration methods, and that the contact patterns learned with CCGE transfer robustly to real-world robotic systems. Project page is https://contact-coverage-guided-exploration.github.io.