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  4. Style-transfer GANs for Bridging the Domain Gap in Synthetic Pose Estimator Training
 
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2020
Conference Paper
Title

Style-transfer GANs for Bridging the Domain Gap in Synthetic Pose Estimator Training

Abstract
Given the dependency of current CNN architectures on a large training set, the possibility of using synthetic data is alluring as it allows generating a virtually infinite amount of labeled training data. However, producing such data is a nontrivial task as current CNN architectures are sensitive to the domain gap between real and synthetic data. We propose to adopt general-purpose GAN models for pixellevel image translation, allowing to formulate the domain gap itself as a learning problem. The obtained models are then used either during training or inference to bridge the domain gap. Here, we focus on training the single-stage YOLO6D [20] object pose estimator on synthetic CAD geometry only, where not even approximate surface information is available. When employing paired GAN models, we use an edge-based intermediate domain and introduce different mappings to represent the unknown surface properties. Our evaluation shows a considerable improvement in model performance when compared to a model trained with the same degree of domain randomization, while requiring only very little additional effort.
Author(s)
Rojtberg, Pavel  
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Pöllabauer, Thomas Jürgen  orcid-logo
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Kuijper, Arjan  orcid-logo
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Mainwork
IEEE International Conference on Artificial Intelligence and Virtual Reality, AIVR 2020. Proceedings  
Conference
International Conference on Artificial Intelligence and Virtual Reality (AIVR) 2020  
Open Access
DOI
10.1109/AIVR50618.2020.00039
Language
English
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Keyword(s)
  • training

  • Solid Modeling

  • pose estimation

  • data models

  • Lead Topic: Visual Computing as a Service

  • Research Line: Computer graphics (CG)

  • Research Line: Computer vision (CV)

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