Publication | Open Access
Vision-based positioning system for auto-docking of unmanned surface vehicles (USVs)
45
Citations
29
References
2021
Year
EngineeringObject DetectorPositioning SystemField RoboticsPoint Cloud ProcessingLocalizationImage AnalysisStereo VisionPositioningRobot LearningAutomated Guided VehicleMachine VisionVision RoboticsVehicle LocalizationUnmanned Surface VehiclesDynamic PositioningAutonomous NavigationComputer VisionIndependent Stereo-visionOdometryAerospace EngineeringRobotics
Abstract This paper presents an independent stereo-vision based positioning system for docking operations. The low-cost system consists of an object detector and different 3D reconstruction techniques. To address the challenge of robust detections in an unstructured and complex outdoor environment, a learning-based object detection model is proposed. The system employs a complementary modular approach that uses data-driven methods, utilizing data wherever required and traditional computer vision methods when the scope and complexity of the environment are reduced. Both, monocular and stereo-vision based methods are investigated for comparison. Furthermore, easily identifiable markers are utilized to obtain reference points, thus simplifying the localization task. A small unmanned surface vehicle (USV) with a LiDAR-based positioning system was exploited to verify that the proposed vision-based positioning system produces accurate measurements under various docking scenarios. Field experiments have proven that the developed system performs well and can supplement the traditional navigation system for safety-critical docking operations.
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