HexagDLy - Processing hexagonally sampled data with CNNs in PyTorch

03/05/2019
by   Constantin Steppa, et al.
0

HexagDLy is a Python-library extending the PyTorch deep learning framework with convolution and pooling operations on hexagonal grids. It aims to ease the access to convolutional neural networks for applications that rely on hexagonally sampled data as, for example, commonly found in ground-based astroparticle physics experiments.

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