Fully automatic brain tumor segmentation with deep learning-based selective attention using overlapping patches and multi-class weighted cross-entropy
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Rostom Kachouri | Rachida Saouli | Mostefa Ben Naceur | Mohamed Akil | M. Akil | R. Saouli | R. Kachouri | M. B. Naceur
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