Publication | Closed Access
Solving computational and memory requirements of feature-based simultaneous localization and mapping algorithms
72
Citations
13
References
2003
Year
EngineeringLocation EstimationField RoboticsLocalization TechniqueFull UpdateLocalizationMapping AlgorithmsMappingImage AnalysisSimultaneous LocalizationSystems EngineeringRelative Landmark RepresentationRobot LearningComputational GeometryCartographyMachine VisionMemory RequirementsComputer EngineeringVehicle LocalizationComputer ScienceAutonomous NavigationSignal ProcessingComputer VisionOdometryRoboticsFeature-based Simultaneous Localization
This paper presents new algorithms to implement simultaneous localization and mapping in environments with very large numbers of features. The algorithms present an efficient solution to the full update required by the compressed extended Kalman filter algorithm. It makes use of the relative landmark representation to develop very close to optimal decorrelation solutions. With this approach, the memory and computational requirements are reduced from /spl sim/O(N/sup 2/) to /spl sim/O(N/sup */N/sub a/), N and N/sub a/ proportional to the number of features in the map and features close to the vehicle, respectively. Experimental results are presented to verify the operation of the system when working in large outdoor environments.
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