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PADDIT: Probabilistic Augmentation of Data using Diffeomorphic Image Transformation

3 October 2018
Mauricio Orbes-Arteaga
Lauge Sørensen
M. Jorge Cardoso
Marc Modat
Sebastien Ourselin
Stefan Sommer
Mads Nielsen
Christian Igel
A. Pai
    DiffM
    MedIm
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Abstract

For proper generalization performance of convolutional neural networks (CNNs) in medical image segmentation, the learnt features should be invariant under particular non-linear shape variations of the input. To induce invariance in CNNs to such transformations, we propose Probabilistic Augmentation of Data using Diffeomorphic Image Transformation (PADDIT) -- a systematic framework for generating realistic transformations that can be used to augment data for training CNNs. We show that CNNs trained with PADDIT outperforms CNNs trained without augmentation and with generic augmentation in segmenting white matter hyperintensities from T1 and FLAIR brain MRI scans.

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