achilles - WMH Segmentation Challenge
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achilles

A neural network similar to HighResNet and DeepLab v3, utilizing atrous (dilated) convolutions, atrous spatial pyramid pooling, and residual connections. The network is trained only on the FLAIR images, taking random 713 sized patches, and applying scaling and rotation augmentations.

Full description of this method.
Docker container of this method.

by Hugo J. Kuijf, Image Sciences Institute, UMC Utrecht, the Netherlands

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