Dexterous manipulation, which refers to the ability of a robotic hand or multi-fingered end-effector to skillfully control, reorient, and manipulate objects through precise, coordinated finger movements and adaptive force modulation, enables complex interactions similar to human hand dexterity. With recent advances in robotics and machine learning, there is a growing demand for these systems to operate in complex and unstructured environments. Traditional model-based approaches struggle to generalize across tasks and object variations due to the high dimensionality and complex contact dynamics of dexterous manipulation. Although model-free methods such as reinforcement learning (RL) show promise, they require extensive training, large-scale interaction data, and carefully designed rewards for stability and effectiveness. Imitation learning (IL) offers an alternative by allowing robots to acquire dexterous manipulation skills directly from expert demonstrations, capturing fine-grained coordination and contact dynamics while bypassing the need for explicit modeling and large-scale trial-and-error. This survey provides an overview of dexterous manipulation methods based on imitation learning, details recent advances, and addresses key challenges in the field. Additionally, it explores potential research directions to enhance IL-driven dexterous manipulation. Our goal is to offer researchers and practitioners a comprehensive introduction to this rapidly evolving domain.
翻译:灵巧操作指机器人手或多指末端执行器通过精确协调的手指运动与自适应力调节,实现对物体的熟练控制、重定向与操作,使其能够执行类似于人手灵巧性的复杂交互。随着机器人学与机器学习的近期进展,这些系统在复杂非结构化环境中运行的需求日益增长。传统基于模型的方法因灵巧操作的高维性与复杂接触动力学,难以在任务和物体变化间泛化。尽管无模型方法如强化学习(RL)展现出潜力,但它们需要大量训练、大规模交互数据以及精心设计的奖励函数以确保稳定性与有效性。模仿学习(IL)提供了一种替代方案,使机器人能够直接从专家演示中学习灵巧操作技能,捕捉细粒度协调与接触动力学,同时避免了显式建模和大规模试错的需求。本综述概述了基于模仿学习的灵巧操作方法,详述了近期进展,并探讨了该领域的关键挑战。此外,本文还探索了增强IL驱动灵巧操作的潜在研究方向。我们的目标是为研究人员和实践者提供对这一快速发展领域的全面介绍。