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Improved Pose Estimation of Aruco Tags Using a Novel 3D Placement Strategy.

Petr OščádalDominik HeczkoAleš VysockýJakub MlotekPetr NovákIvan VirgalaMarek SukopZdenko Bobovský
Published in: Sensors (Basel, Switzerland) (2020)
This paper extends the topic of monocular pose estimation of an object using Aruco tags imaged by RGB cameras. The accuracy of the Open CV Camera calibration and Aruco pose estimation pipelines is tested in detail by performing standardized tests with multiple Intel Realsense D435 Cameras. Analyzing the results led to a way to significantly improve the performance of Aruco tag localization which involved designing a 3D Aruco board, which is a set of Aruco tags placed at an angle to each other, and developing a library to combine the pose data from the individual tags for both higher accuracy and stability.
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