Semi-supervised learning (SSL) uses unlabeled data to compensate for the scarcity of annotated images and the lack of method generalization to unseen domains, two usual problems in medical segmentation tasks. In this work, we propose POPCORN, a novel method combining consistency regularization and pseudo-labeling designed for image segmentation. The proposed framework uses high-level regularization to constrain our segmentation model to use similar latent features for images with similar segmentations. POPCORN estimates a proximity graph to select data from easiest ones to more difficult ones, in order to ensure accurate pseudo-labeling and to limit confirmation bias. Applied to multiple sclerosis lesion segmentation, our method demonstrates competitive results compared to other state-of-the-art SSL strategies.
翻译:半监督学习(SSL)使用未贴标签的数据来弥补附加说明的图像稀缺和对隐蔽领域缺乏方法的概括化,这是医学分割任务的两个常见问题。在这项工作中,我们提出POPCORN,这是将一致性规范化和为图像分割设计的假标签相结合的一种新颖方法。拟议框架使用高层次规范化来限制我们的分解模式,以使用类似的分解图使用相似的潜在特征。POCORN估计了一个近距离图,从最简单的图像选择数据到较困难的数据,以确保准确的伪标签,并限制确认偏差。在多处性硬性病分解中,我们的方法显示了与其他最先进的SSL战略相比的竞争性结果。