Adversarial Generation of Continuous Implicit Shape Representations

@article{Kleineberg2020AdversarialGO,
  title={Adversarial Generation of Continuous Implicit Shape Representations},
  author={Marian Kleineberg and Matthias Fey and Frank Weichert},
  journal={ArXiv},
  year={2020},
  volume={abs/2002.00349}
}
  • Marian Kleineberg, Matthias Fey, Frank Weichert
  • Published 2020
  • Computer Science
  • ArXiv
  • This work presents a generative adversarial architecture for generating three-dimensional shapes based on signed distance representations. While the deep generation of shapes has been mostly tackled by voxel and surface point cloud approaches, our generator learns to approximate the signed distance for any point in space given prior latent information. Although structurally similar to generative point cloud approaches, this formulation can be evaluated with arbitrary point density during… CONTINUE READING

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