Publication | Open Access
Environment classification using Kohonen self‐organizing maps
11
Citations
10
References
2008
Year
EngineeringUnderwater SystemAutonomous Vehicle NavigationKohonen Self‐organizing MapsAutonomous SystemsPrecision NavigationSocial SciencesAuv Navigation StrategiesSelf-organizing SystemIntelligent Autonomous SystemsData ScienceData MiningPattern RecognitionAutonomous VehiclesSystems EngineeringSelf-organizing MapCartographySensor DataGeographyKnowledge DiscoveryAutonomous Underwater VehiclesUnderwater RobotAutonomous NavigationData ClassificationUnderwater VehicleAerospace EngineeringUnderwater SensingUnmanned Aerial SystemsReal Time
Abstract: This paper describes a new method for classifying three‐dimensional environments in real time using Kohonen self‐organizing maps (SOMs). The method has been developed to enable autonomous underwater vehicles (AUVs) to navigate without human intervention in previously unexplored subsea environments, but can be generalized to unmanned aircraft equipped with appropriate sensors flying over unchartered terrains, or spacecraft exploring remote planets, subject to appropriate pre‐mission training. The method involves a fuzzy comparison between a SOM created in real time using accumulated sensor data and a class atlas of SOMs derived from previously trained and manually classified environments. This enables mission‐ and environment‐appropriate AUV navigation strategies to be selected in real time. Simulation results using real‐world, three‐dimensional environment data acquired from digital elevation maps are presented, which demonstrate the potential of the method.
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