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Recovery of superquadric parameters from range images using deep learning

Klemen Grm and Tim Oblak and Aleš Jaklič and Vitomir Štruc and Peter Peer and Franc Solina (2019) Recovery of superquadric parameters from range images using deep learning. In: BMVA technical meeting: 3D vision with deep learning , 20.2.2019, BCS (British Computer Society) in London. 5 Southampton St WC2E 7HA London United Kingdom . (Unpublished)

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      Abstract

      With the recent advancements in deep neural computation, we devise a method to recover superquadric parameters from range images using a convolutional neural network. By training our simple, fullyconvolutional architecture on synthetic data images, containing a single superquadric, we achieve encouraging results. In a fixed rotation scenario, the model could already be used in practice, but we still need to improve on prediction of arbitrary rotational parameters in the future.

      Item Type: Conference or Workshop Item (Poster)
      Institution: University of Ljubljana
      Department: Faculty of Computer and Information Science
      Divisions: Faculty of Computer and Information Science > Computer Vision Laboratory
      Item ID: 4392
      Date Deposited: 11 Mar 2019 10:17
      Last Modified: 11 Mar 2019 10:17
      URI: http://eprints.fri.uni-lj.si/id/eprint/4392

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