Uncertainty Quantification with Deep Ensembles for 6D Object Pose Estimation
Kira Wursthorn,
Markus Hillemann,
Markus Ulrich
Abstract:Abstract. The estimation of 6D object poses is a fundamental task in many computer vision applications. Particularly, in high risk scenarios such as human-robot interaction, industrial inspection, and automation, reliable pose estimates are crucial. In the last years, increasingly accurate and robust deep-learning-based approaches for 6D object pose estimation have been proposed. Many top-performing methods are not end-to-end trainable but consist of multiple stages. In the context of deep uncertainty quantifi… Show more
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