Publication | Closed Access
Multi-modal mapping and localization of unmanned aerial robots based on ultra-wideband and RGB-D sensing
67
Citations
32
References
2017
Year
Unknown Venue
EngineeringLocation EstimationField RoboticsMulti-modal MappingFlying RobotUnmanned VehicleLocalizationUnmanned SystemUnmanned Aerial RobotsUwb SensorsEnvironment MappingUnmanned Aerial VehiclesMachine VisionUav PoseRgb-d SensingVehicle LocalizationRange ImagingAerial RoboticsOdometryAerospace EngineeringRemote SensingRoboticsUnmanned Aerial Systems
This paper presents a methodology for mapping and localization of Unmanned Aerial Vehicles (UAVs) based on the integration of sensors from different modalities. Particularly, we integrate distance estimations to Ultra-Wideband (UWB) sensors and 3D point-clouds from RGB-D sensors. First, a novel approach for environment mapping is introduced, exploiting the synergies between UWB sensors and point-clouds to produce a multi-modal 3D map that integrates the estimated UWB sensors position. This map is further integrated into a Monte Carlo Localization method to robustly estimate the UAV pose. Finally, the full approach is tested with real indoor flights and validated with a motion tracking system.
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