ROLGApr 4, 2025

Dexterous Manipulation through Imitation Learning: A Survey

arXiv:2504.03515v430 citationsh-index: 8IEEE Trans Autom Sci Eng
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of achieving human-like dexterity in robotics for complex and unstructured environments, but is incremental as it synthesizes existing research rather than presenting new findings.

This survey tackles the problem of enabling robots to perform dexterous manipulation by reviewing imitation learning methods as an alternative to traditional model-based and model-free approaches, which struggle with generalization and data requirements, aiming to provide a comprehensive overview for researchers and practitioners.

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.

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