Zhanhong QiuWeiyan GanZhi YangRan ZhouHaitao Gan
<abstract><p>Semi-supervised medical image segmentation is currently a highly researched area. Pseudo-label learning is a traditional semi-supervised learning method aimed at acquiring additional knowledge by generating pseudo-labels for unlabeled data. However, this method relies on the quality of pseudo-labels and can lead to an unstable training process due to differences between samples. Additionally, directly generating pseudo-labels from the model itself accelerates noise accumulation, resulting in low-confidence pseudo-labels. To address these issues, we proposed a dual uncertainty-guided multi-model pseudo-label learning framework (DUMM) for semi-supervised medical image segmentation. The framework consisted of two main parts: The first part is a sample selection module based on sample-level uncertainty (SUS), intended to achieve a more stable and smooth training process. The second part is a multi-model pseudo-label generation module based on pixel-level uncertainty (PUM), intended to obtain high-quality pseudo-labels. We conducted a series of experiments on two public medical datasets, ACDC2017 and ISIC2018. Compared to the baseline, we improved the Dice scores by 6.5% and 4.0% over the two datasets, respectively. Furthermore, our results showed a clear advantage over the comparative methods. This validates the feasibility and applicability of our approach.</p></abstract>
Wenlong HangPeng DaiChenglong PanShuang LiangQingfeng ZhangQiong WangYukun JinQiong WangJing Qin
Guangxing DuRui WuJinming XuXiang Jun ZengShengwu Xiong
Yue LuYihang WuAhmad ChaddadTareef S. DaqqaqReem Kateb
Huijie FanJinghan CaoXi’ai ChenSen LinKemal PolatJingchun Zhou