Publication | Closed Access
Integrated task and motion planning in belief space
326
Citations
57
References
2013
Year
Artificial IntelligenceEngineeringField RoboticsIntelligent RoboticsCognitive RoboticsObject ManipulationIntelligent SystemsTask PlanningSystems EngineeringIntegrated StrategyRobot LearningManipulation GoalsRobotics PerceptionHealth SciencesRobot Motion PlanningCognitive ScienceHierarchical Goal RegressionComputer ScienceBelief SpaceAi PlanningMotion PlanningAutomationPlanningRobotics
We describe an integrated strategy for planning, perception, state estimation and action in complex mobile manipulation domains based on planning in the belief space of probability distributions over states using hierarchical goal regression (pre-image back-chaining). We develop a vocabulary of logical expressions that describe sets of belief states, which are goals and subgoals in the planning process. We show that a relatively small set of symbolic operators can give rise to task-oriented perception in support of the manipulation goals. An implementation of this method is demonstrated in simulation and on a real PR2 robot, showing robust, flexible solution of mobile manipulation problems with multiple objects and substantial uncertainty.
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