Multiform Adaptive Robot Skill Learning from Humans (1708.05192v1)
Abstract: Object manipulation is a basic element in everyday human lives. Robotic manipulation has progressed from maneuvering single-rigid-body objects with firm grasping to maneuvering soft objects and handling contact-rich actions. Meanwhile, technologies such as robot learning from demonstration have enabled humans to intuitively train robots. This paper discusses a new level of robotic learning-based manipulation. In contrast to the single form of learning from demonstration, we propose a multiform learning approach that integrates additional forms of skill acquisition, including adaptive learning from definition and evaluation. Moreover, going beyond state-of-the-art technologies of handling purely rigid or soft objects in a pseudo-static manner, our work allows robots to learn to handle partly rigid partly soft objects with time-critical skills and sophisticated contact control. Such capability of robotic manipulation offers a variety of new possibilities in human-robot interaction.
- Leidi Zhao (2 papers)
- Raheem Lawhorn (1 paper)
- Siddharth Patil (2 papers)
- Steve Susanibar (1 paper)
- Lu Lu (189 papers)
- Cong Wang (310 papers)
- Bo Ouyang (11 papers)