3D Steerable CNNs: Learning Rotationally Equivariant Features in Volumetric Data
| Authors |
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| Publication date | 2019 |
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| Book title | 32nd Conference on Neural Information Processing Systems 2018 |
| Book subtitle | Montreal, Canada, 3-8 December 2018 |
| ISBN |
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| 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 |
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| 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.
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| 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 |
NeurIPS-2018-3d-steerable-cnns-learning-rotationally-equivariant-features-in-volumetric-data-Paper
(Accepted author manuscript)
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