AIVIO: Closed-loop, Object-relative Navigation of UAVs with AI-aided Visual Inertial Odometry
Object-relative mobile robot navigation is essential for a variety of tasks, e.g. autonomous critical infrastructure inspection, but requires the capability to extract semantic information about the objects of interest from raw sensory data. While deep learning-based (DL) methods excel at inferring semantic object information from images, such as class and relative 6 degree of freedom (6-DoF) pose, they are computationally demanding and thus often not suitable for payload constrained mobile robots. In this letter we present a real-time capable unmanned aerial vehicle (UAV) system for object-relative, closed-loop navigation with a minimal sensor configuration consisting of an inertial measurement unit (IMU) and RGB camera. Utilizing a DL-based object pose estimator, solely trained on synthetic data and optimized for companion board deployment, the object-relative pose measurements are fused with the IMU data to perform object-relative localization. We conduct multiple real-world experiments to validate the performance of our system for the challenging use case of power pole inspection. An example closed-loop flight is presented in the supplementary video.
For more details we kindly refer you to our publication and our Github.
Citation
T. Jantos, M. Scheiber, C. Brommer, E. Allak, S. Weiss and J. Steinbrener, “AIVIO: Closed-Loop, Object-Relative Navigation of UAVs With AI-Aided Visual Inertial Odometry,” in IEEE Robotics and Automation Letters, vol. 9, no. 12, pp. 10764-10771, Dec. 2024, doi: 10.1109/LRA.2024.3479713.
keywords: {Navigation;6-DOF;Autonomous aerial vehicles;Robot localization;Inspection;Cameras;Semantics;Accuracy;Robot vision systems;Global navigation satellite system;AI-based methods;autonomous vehicle navigation;object-relative localization;vision-based navigation}.
Dataset
The dataset used in the paper is available for scientific purposes upon request. The dataset includes 3D object models, synthetic data, real world data and data processing tools.
Please contact us at: thomas [dot] jantos [at] aau [dot] at
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