Real-world robotics: Learning to plan for robust execution
作者:Scott W. Bennett, Gerald F. Dejong
摘要
In executing classical plans in the real world, small discrepancies between a planner's internal representations and the real world are unavoidable. These can conspire to cause real-world failures even though the planner is sound and, therefore, “proves” that a sequence of actions achieves the goal. Permissive planning, a machine learning extension to classical planning, is one response to this difficulty. This paper describes the permissive planning approach and presents GRASPER, a permissive planning robotic system that learns to robustly pick up novel objects.
论文关键词:machine learning, robotics, uncertainty, planning
论文评审过程:
论文官网地址:https://doi.org/10.1007/BF00117442