Abstract
Learning and deliberation are required to endow a robot with the capabilities to acquire knowledge, perform a variety of tasks and interactions, and adapt to open-ended environments. This paper explores the notion of experiencebased planning domains (EBPDs) for task-level learning and planning in robotics. EBPDs rely on methods for a robot to: (i) obtain robot activity experiences from the robot's performance; (ii) conceptualize each experience to a task model called activity schema; and (iii) exploit the learned activity schemata to make plans in similar situations. Experiences are episodic descriptions of plan-based robot activities including environment perception, sequences of applied actions and achieved tasks. The conceptualization approach integrates different techniques including deductive generalization, abstraction and feature extraction to learn activity schemata. A high-level task planner was developed to find a solution for a similar task by following an activity schema. In this paper, we extend our previous approach by integrating goal inference capabilities. The proposed approach is illustrated in a restaurant environment where a service robot learns how to carry out complex tasks.
Cite
CITATION STYLE
Mokhtari, V., Lopes, L. S., & Pinho, A. J. (2016). Experience-based robot task Learning and planning with goal inference. In Proceedings International Conference on Automated Planning and Scheduling, ICAPS (Vol. 2016-January, pp. 509–517). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/icaps.v26i1.13794
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