Add PyTorch implementation for P4 and P4M GConv#5
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jornpeters wants to merge 3 commits intotscohen:masterfrom
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Add PyTorch implementation for P4 and P4M GConv#5jornpeters wants to merge 3 commits intotscohen:masterfrom
jornpeters wants to merge 3 commits intotscohen:masterfrom
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This adds P4-conv and P4M-conv classes for PyTorch.
The implementation is based on the Chainer implementation (SplitGConv2D base class), the main difference being that the filter transforms are implemented using torch.gather instead of a custom function/kernel.
Equivariance tests (mimicking those for the Chainer implementation) are included. Moreover, the rotated MNIST experiment in [1] was reproduced to validate the implementation (the experiment file is not included in this pull request).
[1] T.S. Cohen, M. Welling, Group Equivariant Convolutional Networks. Proceedings of the International Conference on Machine Learning (ICML), 2016.