performance in image object localization. However, commonly used supervised learning
methods require large training datasets with pixel-level or bounding box annotations.
Obtaining such fine-grained annotations is extremely costly, especially in the medical
imaging domain. In this work, we propose a novel weakly supervised method for breast
cancer localization. The essential advantage of our approach is that the model only requires …