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Improving 6D Object Pose Estimation of metallic Household and Industry Objects

5 March 2025
Thomas Pollabauer
Michael Gasser
Tristan Wirth
Sarah Berkei
Volker Knauthe
Arjan Kuijper
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Abstract

6D object pose estimation suffers from reduced accuracy when applied to metallic objects. We set out to improve the state-of-the-art by addressing challenges such as reflections and specular highlights in industrial applications. Our novel BOP-compatible dataset, featuring a diverse set of metallic objects (cans, household, and industrial items) under various lighting and background conditions, provides additional geometric and visual cues. We demonstrate that these cues can be effectively leveraged to enhance overall performance. To illustrate the usefulness of the additional features, we improve upon the GDRNPP algorithm by introducing an additional keypoint prediction and material estimator head in order to improve spatial scene understanding. Evaluations on the new dataset show improved accuracy for metallic objects, supporting the hypothesis that additional geometric and visual cues can improve learning.

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@article{pöllabauer2025_2503.03655,
  title={ Improving 6D Object Pose Estimation of metallic Household and Industry Objects },
  author={ Thomas Pöllabauer and Michael Gasser and Tristan Wirth and Sarah Berkei and Volker Knauthe and Arjan Kuijper },
  journal={arXiv preprint arXiv:2503.03655},
  year={ 2025 }
}
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