Publication | Closed Access
Sonar image quality assessment for an autonomous underwater vehicle
11
Citations
3
References
2004
Year
Artificial IntelligenceEngineeringMachine LearningUnderwater SystemMarine EngineeringAutonomous SystemsIntelligent SystemsEu-funded Project IiAutonomous Underwater VehicleUnderwater ImagingImage AnalysisData SciencePattern RecognitionSystems EngineeringSonar Signal ProcessingBayesian Belief ModuleBayesian NetworkComputer ScienceUnderwater RobotSignal ProcessingComputer VisionBayesian NetworksUnderwater Vehicle
Within the EU-funded project II the participating partners are developing an advanced machine diagnosis system for autonomous systems, which is based on an integrated approach. The solution combines different intelligent modules to create the open software architecture for diagnosis and decision tasks. ATLAS ELEKTRONIK is going to integrate the ADVOCATE modules into an autonomous underwater vehicle (AUV), which must rely on an automatic obstacle avoidance system, based on sonar image processing. Beside typical electronic failures there is the possibility that the image quality is not sufficient for reliable obstacle recognition. The AUV needs to know this fact to react in an appropriate manner. To solve this sonar image assessment problem, a Bayesian belief module (BBN) has been developed. The BBN module is based on the AI technique known as probabilistic graphical models (PGMs). In particular, a time-sliced, object-oriented limited-memory influence diagram is used as the underlying PGM of the BBN module. The BBN module provides a diagnosis and suggests appropriate recovery actions on the sonar image assessment task
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