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Implicit Geometric Regularization for Learning Shapes

Machine Learning 2020-07-10 v2 Computer Vision and Pattern Recognition Graphics Machine Learning

Abstract

Representing shapes as level sets of neural networks has been recently proved to be useful for different shape analysis and reconstruction tasks. So far, such representations were computed using either: (i) pre-computed implicit shape representations; or (ii) loss functions explicitly defined over the neural level sets. In this paper we offer a new paradigm for computing high fidelity implicit neural representations directly from raw data (i.e., point clouds, with or without normal information). We observe that a rather simple loss function, encouraging the neural network to vanish on the input point cloud and to have a unit norm gradient, possesses an implicit geometric regularization property that favors smooth and natural zero level set surfaces, avoiding bad zero-loss solutions. We provide a theoretical analysis of this property for the linear case, and show that, in practice, our method leads to state of the art implicit neural representations with higher level-of-details and fidelity compared to previous methods.

Keywords

Cite

@article{arxiv.2002.10099,
  title  = {Implicit Geometric Regularization for Learning Shapes},
  author = {Amos Gropp and Lior Yariv and Niv Haim and Matan Atzmon and Yaron Lipman},
  journal= {arXiv preprint arXiv:2002.10099},
  year   = {2020}
}

Comments

37th International Conference on Machine Learning, Vienna, Austria, 2020