Domain adversarial networks and intensity-based data augmentation for male pelvic organ segmentation in cone beam CT
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Benoit M. Macq | Eliott Brion | Ana M. Barragan-Montero | Jean Léger | Nicolas Meert | John A. Lee | B. Macq | J. Lee | A. Barragán-Montero | Jean Léger | N. Meert | E. Brion | A. M. Barragán-Montero
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