The action language BC provides an elegant way of formalizing dynamic domains which involve indirect effects of actions and recursively defined fluents. In complex robot task planning domains, it may be necessary for robots to plan with incomplete information, and reason about indirect or recursive action effects. In this paper, we demonstrate how BC can be used for robot task planning to solve these issues. Additionally, action costs are incorporated with planning to produce optimal plans, and we estimate these costs from experience making planning adaptive. This paper presents the first application of BC on a real robot in a realistic domain, which involves human-robot interaction for knowledge acquisition, optimal plan generation to mini...
This chapter presents a newly developed approach for intelligently generating symbolic plans for mob...
This chapter presents a newly developed approach for intelligently generating symbolic plans for mob...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
The action language BC provides an elegant way of formalizing dynamic domains which involve indirect...
The action language BC provides an elegant way of for-malizing dynamic domains which involve indirec...
For mobile robots to perform complex missions, it may be necessary for them to plan with incomplete ...
Abstract. Planning in real-world environments can be challenging for intelligent robots due to incom...
Abstract. Action language BC provides an elegant way of formalizing robotic domains which need to be...
Real world robot tasks are so complex that it is hard to hand-tune all of the domain knowledge, espe...
Action planning ability is essential for autonomous behavior of an intelligent machine. In the robot...
In order for human-assisting robots to be deployed in the real world such as household environments,...
In the last years Automated Planning (AP) has experimented important advances. In this paper we appl...
Abstract: Automated action planning is crucial for efficient execution of mobile robot missions. Aut...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
Autonomous robotic systems are becoming widespread in the form of self-driving cars, drones, and eve...
This chapter presents a newly developed approach for intelligently generating symbolic plans for mob...
This chapter presents a newly developed approach for intelligently generating symbolic plans for mob...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
The action language BC provides an elegant way of formalizing dynamic domains which involve indirect...
The action language BC provides an elegant way of for-malizing dynamic domains which involve indirec...
For mobile robots to perform complex missions, it may be necessary for them to plan with incomplete ...
Abstract. Planning in real-world environments can be challenging for intelligent robots due to incom...
Abstract. Action language BC provides an elegant way of formalizing robotic domains which need to be...
Real world robot tasks are so complex that it is hard to hand-tune all of the domain knowledge, espe...
Action planning ability is essential for autonomous behavior of an intelligent machine. In the robot...
In order for human-assisting robots to be deployed in the real world such as household environments,...
In the last years Automated Planning (AP) has experimented important advances. In this paper we appl...
Abstract: Automated action planning is crucial for efficient execution of mobile robot missions. Aut...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
Autonomous robotic systems are becoming widespread in the form of self-driving cars, drones, and eve...
This chapter presents a newly developed approach for intelligently generating symbolic plans for mob...
This chapter presents a newly developed approach for intelligently generating symbolic plans for mob...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...