Segmentation of Masses on Mammograms Using Data Augmentation and Deep Learning
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Tiago Zonta | Rodrigo da Rosa Righi | Felipe André Zeiser | Cristiano André da Costa | Nuno M. C. Marques | Adriana Vial Roehe | Marcelo Moreno | C. A. da Costa | Rodrigo da Rosa Righi | A. Roehe | M. Moreno | F. Zeiser | Tiago Zonta | Nuno Marques | Marcelo Moreno
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