Semi-supervised Learning for Network-Based Cardiac MR Image Segmentation
Wenjia Bai(NIHR Imperial Biomedical Research Centre), Daniel Rueckert(Munich Center for Machine Learning), Hideaki Suzuki(Imperial College London), Andrew P. King(King's College London), Ozan Oktay, Ben Glocker, Paul M. Matthews(Hammersmith Hospital), Giacomo Tarroni(Institute of Group Analysis), Martin Rajchl(Institute of Group Analysis), Matthew Sinclair(Institute of Group Analysis)
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