Learning rich features with hybrid loss for brain tumor segmentation.
Daobin HuangMinghui WangLing ZhangHaichun LiMinquan YeAo LiPublished in: BMC medical informatics and decision making (2021)
The proposed parallel structure can effectively fuse multi-level features to generate rich feature representation for high-resolution results. Moreover, the hybrid loss functions can alleviate the class imbalance issue and guide the training process. The proposed method can be used in other medical segmentation tasks.