Interactive Imitation Learning for Dexterous Robotic Manipulation: Challenges and Perspectives -- A Survey
Journal:
arXiv
Published Date:
May 30, 2025
Abstract
Dexterous manipulation is a crucial yet highly complex challenge in humanoid
robotics, demanding precise, adaptable, and sample-efficient learning methods.
As humanoid robots are usually designed to operate in human-centric
environments and interact with everyday objects, mastering dexterous
manipulation is critical for real-world deployment. Traditional approaches,
such as reinforcement learning and imitation learning, have made significant
strides, but they often struggle due to the unique challenges of real-world
dexterous manipulation, including high-dimensional control, limited training
data, and covariate shift. This survey provides a comprehensive overview of
these challenges and reviews existing learning-based methods for dexterous
manipulation, spanning imitation learning, reinforcement learning, and hybrid
approaches. A promising yet underexplored direction is interactive imitation
learning, where human feedback actively refines a robot's behavior during
training. While interactive imitation learning has shown success in various
robotic tasks, its application to dexterous manipulation remains limited. To
address this gap, we examine current interactive imitation learning techniques
applied to other robotic tasks and discuss how these methods can be adapted to
enhance dexterous manipulation. By synthesizing state-of-the-art research, this
paper highlights key challenges, identifies gaps in current methodologies, and
outlines potential directions for leveraging interactive imitation learning to
improve dexterous robotic skills.