Publication | Closed Access
Vision-based Guidance and Navigation for Autonomous MAV in Indoor Environment
20
Citations
15
References
2020
Year
Unknown Venue
Vision-based Path PlanningAutomatic NavigationMachine VisionEngineeringOdometryAerospace EngineeringMapping AlgorithmVision RoboticsField RoboticsVehicle LocalizationAutonomous MavUnmanned VehicleRoboticsAutonomous NavigationDrone NavigationComputer VisionMapping
The paper presents an autonomous vision-based guidance and mapping algorithm for navigation of drones in a GPS-denied environment. We propose a novel algorithm that accurately uses OpenCV ArUco markers as a reference for path detection and guidance using a stereo camera. It enables the drone to navigate and map an environment using vision-based path planning. Special attention has been given towards the robustness of guidance and controlling strategy, accuracy in the vehicle pose estimation and real-time operation. The proposed algorithm is evaluated in a 3D simulated environment using ROS and Gazebo. The results have been presented for drone navigation in a maze pattern indoor scenario. Evaluation of the given guidance system in the simulated environment suggests that the proposed system can be used for generating a 2D/3D occupancy grid map autonomously without the use of high-level algorithms and expensive sensors such as lidars.
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