Semi-supervised learning has substantially advanced medical image segmentation since it alleviates the heavy burden of acquiring the costly expert-examined annotations. Especially, the consistency-based approaches have attracted more attention for their superior performance, wherein the real labels are only utilized to supervise their paired images via supervised loss while the unlabeled images are exploited by enforcing the perturbation-based \textit{"unsupervised"} consistency without explicit guidance from those real labels. However, intuitively, the expert-examined real labels contain more reliable supervision signals. Observing this, we ask an unexplored but interesting question: can we exploit the unlabeled data via explicit real label supervision for semi-supervised training? To this end, we discard the previous perturbation-based consistency but absorb the essence of non-parametric prototype learning. Based on the prototypical network, we then propose a novel cyclic prototype consistency learning (CPCL) framework, which is constructed by a labeled-to-unlabeled (L2U) prototypical forward process and an unlabeled-to-labeled (U2L) backward process. Such two processes synergistically enhance the segmentation network by encouraging more discriminative and compact features. In this way, our framework turns previous \textit{"unsupervised"} consistency into new \textit{"supervised"} consistency, obtaining the \textit{"all-around real label supervision"} property of our method. Extensive experiments on brain tumor segmentation from MRI and kidney segmentation from CT images show that our CPCL can effectively exploit the unlabeled data and outperform other state-of-the-art semi-supervised medical image segmentation methods.
翻译:半监督的学习大大提高了医学图像分割的难度, 因为它减轻了获取昂贵专家检查的注释的沉重负担。 特别是, 以一致性为基础的方法吸引了对其优异性能的更多关注。 特别是, 以一致性为基础的方法吸引了更多的关注, 真正的标签仅用于通过监督性损失来监督配对的图像, 而未贴标签的图像则通过实施基于扰动的\ textit{“ 不受监督的” 一致性来加以利用, 而没有这些真实标签的明确指导。 然而, 专家检查的真实标签含有更可靠的监管信号。 但是, 直观地, 专家检查的真实标签包含着一个更可靠的监管信号 。 我们发现一个尚未解析但有趣的问题: 我们能否通过明确的真实标签监督性监督来利用未贴标签的图像? 为此, 我们放弃了先前的基于扰动性图像的一致性, 但却吸收了非参数学习的精髓。 根据基于原始网络的“ CPCLL), 我们然后建议建立一个全新的周期性原型一致性学习(CPLLL) 框架,, 由一个被贴标签的直到没有标签的逻辑的 。 Protototovial- ad- liversal- liview liview- calalalalalationalationalationalationalation 进程, 和 。