Publication | Closed Access
Dual kalman filters for autonomous terrain aided navigation in unknown environments
20
Citations
29
References
2006
Year
EngineeringLocation EstimationField RoboticsUnknown EnvironmentsLocalizationKalman FilterMappingState EstimationKinematicsAutomatic NavigationCartographyAutonomous TerrainVehicle LocalizationDual Kalman FiltersAutonomous NavigationTerrain Aided NavigationOdometryAerospace EngineeringRemote SensingRobotics
In this paper, we address a method for terrain aided navigation of unmanned vehicles in unknown environments. The task is to simultaneously estimate the state of the vehicle (position and attitude) and a map of the surrounding environment given limited sensing capabilities. Possible available sensors include an on-board inertial measurement unit (IMU) and other simple "terrain sensors" such as altitude, temperature, or vision based features. Explicit positioning sensors such as GPS or a prior land map are not available. This problem is widely known as simultaneous localization and mapping (SLAM). A dual Kalman filter framework is proposed that works by alternating between using one Kalman filter to localize the vehicle given the current estimated map, and a second Kalman filter to update the estimate of the map given the position of the vehicle. Simulation results are generated for a two dimensional environment comparing the extended Kalman filter (EKF) and sigma point Kalman filter (SPKF) based implementations. It is shown that the SPKF based approach converges faster and also to a lower mean square error (MSE) than that of the EKF counterpart.
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