3D Steerable CNNs: Learning Rotationally Equivariant Features in Volumetric Data

Open Access
Authors
Publication date 2019
Host editors
  • S. Bengio
  • H. Wallach
  • H. Larochelle
  • K. Grauman
  • N. Cesa-Bianchi
  • R. Garnett
Book title 32nd Conference on Neural Information Processing Systems 2018
Book subtitle Montreal, Canada, 3-8 December 2018
ISBN
  • 9781510884472
Series Advances in Neural Information Processing Systems
Event Advances in Neural Information Processing Systems 2018
Volume | Issue number 15
Pages (from-to) 10381-10392
Number of pages 17
Publisher La Jolla, CA: Neural Information Processing Systems Foundation
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
We present a convolutional network that is equivariant to rigid body motions. The model uses scalar-, vector-, and tensor fields over 3D Euclidean space to represent data, and equivariant convolutions to map between such representations. These SE(3)-equivariant convolutions utilize kernels which are parameterized as a linear combination of a complete steerable kernel basis, which is derived analytically in this paper. We prove that equivariant convolutions are the most general equivariant linear maps between fields over R^3. Our experimental results confirm the effectiveness of 3D Steerable CNNs for the problem of amino acid propensity prediction and protein structure classification, both of which have inherent SE(3) symmetry.
Document type Conference contribution
Note With supplemental file
Language English
Published at https://papers.nips.cc/paper/2018/hash/488e4104520c6aab692863cc1dba45af-Abstract.html
Other links http://www.proceedings.com/48413.html
Downloads
Supplementary materials
Permalink to this page
Back