Publication | Closed Access
Planning under Uncertainty for Robotic Tasks with Mixed Observability
237
Citations
30
References
2010
Year
Artificial IntelligenceRobotic SystemsEngineeringField RoboticsPomdp AlgorithmsTrajectory PlanningUncertainty QuantificationFactored RepresentationSystems EngineeringRobotics PerceptionHealth SciencesPath PlanningRobot Motion PlanningComputer ScienceMixed ObservabilityMarkov Decision ProcessAi PlanningMotion PlanningObservable ComponentsAutomationPlanningRobotics
Partially observable Markov decision processes (POMDPs) provide a principled, general framework for robot motion planning in uncertain and dynamic environments. They have been applied to various robotic tasks. However, solving POMDPs exactly is computationally intractable. A major challenge is to scale up POMDP algorithms for complex robotic tasks. Robotic systems often have mixed observability : even when a robot’s state is not fully observable, some components of the state may still be so. We use a factored model to represent separately the fully and partially observable components of a robot’s state and derive a compact lower-dimensional representation of its belief space. This factored representation can be combined with any point-based algorithm to compute approximate POMDP solutions. Experimental results show that on standard test problems, our approach improves the performance of a leading point-based POMDP algorithm by many times.
| Year | Citations | |
|---|---|---|
Page 1
Page 1