A Survey on Imitation Learning for Contact-Rich Tasks in Robotics
By: Toshiaki Tsuji , Yasuhiro Kato , Gokhan Solak and more
Potential Business Impact:
Teaches robots to do tricky jobs by watching.
This paper comprehensively surveys research trends in imitation learning for contact-rich robotic tasks. Contact-rich tasks, which require complex physical interactions with the environment, represent a central challenge in robotics due to their nonlinear dynamics and sensitivity to small positional deviations. The paper examines demonstration collection methodologies, including teaching methods and sensory modalities crucial for capturing subtle interaction dynamics. We then analyze imitation learning approaches, highlighting their applications to contact-rich manipulation. Recent advances in multimodal learning and foundation models have significantly enhanced performance in complex contact tasks across industrial, household, and healthcare domains. Through systematic organization of current research and identification of challenges, this survey provides a foundation for future advancements in contact-rich robotic manipulation.
Similar Papers
On the Importance of Tactile Sensing for Imitation Learning: A Case Study on Robotic Match Lighting
Robotics
Robots learn to do tricky jobs by feeling.
Learning to Act Through Contact: A Unified View of Multi-Task Robot Learning
Robotics
Robot learns many jobs with one brain.
Interactive Imitation Learning for Dexterous Robotic Manipulation: Challenges and Perspectives -- A Survey
Robotics
Teaches robots to pick up and use things.