This is a PyTorch implementation of the spline-based convolution operator of SplineCNN, as described in our paper:
Matthias Fey, Jan Eric Lenssen, Frank Weichert, Heinrich Müller: SplineCNN: Fast Geometric Deep Learning with Continuous B-Spline Kernels (CVPR 2018)
The operator works on all floating point data types and is implemented both for CPU and GPU.
Ensure that at least PyTorch 1.1.0 is installed and verify that cuda/bin
and cuda/include
are in your $PATH
and $CPATH
respectively, e.g.:
$ python -c "import torch; print(torch.__version__)"
>>> 1.1.0
$ echo $PATH
>>> /usr/local/cuda/bin:...
$ echo $CPATH
>>> /usr/local/cuda/include:...
Then run:
pip install torch-spline-conv
If you are running into any installation problems, please create an issue.
Be sure to import torch
first before using this package to resolve symbols the dynamic linker must see.
from torch_spline_conv import SplineConv
out = SplineConv.apply(x,
edge_index,
pseudo,
weight,
kernel_size,
is_open_spline,
degree=1,
norm=True,
root_weight=None,
bias=None)
Applies the spline-based convolution operator
over several node features of an input graph. The kernel function is defined over the weighted B-spline tensor product basis, as shown below for different B-spline degrees.- x (Tensor) - Input node features of shape
(number_of_nodes x in_channels)
. - edge_index (LongTensor) - Graph edges, given by source and target indices, of shape
(2 x number_of_edges)
. - pseudo (Tensor) - Edge attributes, ie. pseudo coordinates, of shape
(number_of_edges x number_of_edge_attributes)
in the fixed interval [0, 1]. - weight (Tensor) - Trainable weight parameters of shape
(kernel_size x in_channels x out_channels)
. - kernel_size (LongTensor) - Number of trainable weight parameters in each edge dimension.
- is_open_spline (ByteTensor) - Whether to use open or closed B-spline bases for each dimension.
- degree (int, optional) - B-spline basis degree. (default:
1
) - norm (bool, optional): Whether to normalize output by node degree. (default:
True
) - root_weight (Tensor, optional) - Additional shared trainable parameters for each feature of the root node of shape
(in_channels x out_channels)
. (default:None
) - bias (Tensor, optional) - Optional bias of shape
(out_channels)
. (default:None
)
- out (Tensor) - Out node features of shape
(number_of_nodes x out_channels)
.
import torch
from torch_spline_conv import SplineConv
x = torch.rand((4, 2), dtype=torch.float) # 4 nodes with 2 features each
edge_index = torch.tensor([[0, 1, 1, 2, 2, 3], [1, 0, 2, 1, 3, 2]]) # 6 edges
pseudo = torch.rand((6, 2), dtype=torch.float) # two-dimensional edge attributes
weight = torch.rand((25, 2, 4), dtype=torch.float) # 25 parameters for in_channels x out_channels
kernel_size = torch.tensor([5, 5]) # 5 parameters in each edge dimension
is_open_spline = torch.tensor([1, 1], dtype=torch.uint8) # only use open B-splines
degree = 1 # B-spline degree of 1
norm = True # Normalize output by node degree.
root_weight = torch.rand((2, 4), dtype=torch.float) # separately weight root nodes
bias = None # do not apply an additional bias
out = SplineConv.apply(x, edge_index, pseudo, weight, kernel_size,
is_open_spline, degree, norm, root_weight, bias)
print(out.size())
torch.Size([4, 4]) # 4 nodes with 4 features each
Please cite our paper if you use this code in your own work:
@inproceedings{Fey/etal/2018,
title={{SplineCNN}: Fast Geometric Deep Learning with Continuous {B}-Spline Kernels},
author={Fey, Matthias and Lenssen, Jan Eric and Weichert, Frank and M{\"u}ller, Heinrich},
booktitle={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2018},
}
python setup.py test