The scarcity of pixel-level annotation is a prevalent problem in medical image segmentation tasks. In this paper, we introduce a novel regularization strategy involving interpolation-based mixing for semi-supervised medical image segmentation. The proposed method is a new consistency regularization strategy that encourages segmentation of interpolation of two unlabelled data to be consistent with the interpolation of segmentation maps of those data. This method represents a specific type of data-adaptive regularization paradigm which aids to minimize the overfitting of labelled data under high confidence values. The proposed method is advantageous over adversarial and generative models as it requires no additional computation. Upon evaluation on two publicly available MRI datasets: ACDC and MMWHS, experimental results demonstrate the superiority of the proposed method in comparison to existing semi-supervised models. Code is available at: https://github.com/hritam-98/ICT-MedSeg
翻译:在本文中,我们采用了一种新的正规化战略,涉及以内插方式混合进行半监督医疗图像分割,拟议的方法是一种新的一致性正规化战略,鼓励按照这些数据的分解图的内插,对两种未贴标签的数据进行分解。这种方法代表了一种特定类型的数据适应性正规化模式,有助于尽量减少在高信任值下过度配置贴标签数据。拟议的方法优于对抗性和基因化模式,因为它不需要额外的计算。在对两种公开的 MRI数据集(ACDC和MMMWHS)进行评估后,实验结果显示,与现有的半监督模式相比,拟议方法优于现有模式。代码见:https://github.com/hritam-98/ICT-MedSeg。