Publication | Closed Access
Global A-Optimal Robot Exploration in SLAM
237
Citations
13
References
2006
Year
Unknown Venue
EngineeringGlobal PlanningField RoboticsLocalizationSocial SciencesKalman FilterMappingGlobal Planning TrajectoriesSimultaneous LocalizationRobot LearningComputational GeometryAutomatic NavigationPath PlanningCartographyVehicle LocalizationAutonomous NavigationOdometryPlanningRoboticsIterated Local Search
It is well-known that the Kalman filter for simultaneous localization and mapping (SLAM) converges to a fully correlated map in the limit of infinite time and data [1]. However, the rate of convergence of the map has a strong dependence on the order of the observations. We show that conventional exploration algorithms for collecting map data are sub-optimal in both the objective function and choice of optimization procedure. We show that optimizing the a-optimal information measure results in a more accurate map than existing approaches, using a greedy, closed-loop strategy. Secondly, we demonstrate that by restricting the planning to an appropriate policy class, we can tractably find non-greedy, global planning trajectories that produce more accurate maps, explicitly planning to close loops even in open-loop scenarios.
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