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Investigations on Output Parameterizations of Neural Networks for Single Shot 6D Object Pose Estimation

15 April 2021
Kilian Kleeberger
Markus Völk
Richard Bormann
Marco F. Huber
    3DPC
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Abstract

Single shot approaches have demonstrated tremendous success on various computer vision tasks. Finding good parameterizations for 6D object pose estimation remains an open challenge. In this work, we propose different novel parameterizations for the output of the neural network for single shot 6D object pose estimation. Our learning-based approach achieves state-of-the-art performance on two public benchmark datasets. Furthermore, we demonstrate that the pose estimates can be used for real-world robotic grasping tasks without additional ICP refinement.

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