Image segmentation is a fundamental task in the field of imaging and vision. Supervised deep learning for segmentation has achieved unparalleled success when sufficient training data with annotated labels are available. However, annotation is known to be expensive to obtain, especially for histopathology images where the target regions are usually with high morphology variations and irregular shapes. Thus, weakly supervised learning with sparse annotations of points is promising to reduce the annotation workload. In this work, we propose a contrast-based variational model to generate segmentation results, which serve as reliable complementary supervision to train a deep segmentation model for histopathology images. The proposed method considers the common characteristics of target regions in histopathology images and can be trained in an end-to-end manner. It can generate more regionally consistent and smoother boundary segmentation, and is more robust to unlabeled `novel' regions. Experiments on two different histology datasets demonstrate its effectiveness and efficiency in comparison to previous models.
翻译:图像分割是成像和视觉领域中的基本任务。当有足够的带标签的训练数据可用时,基于监督的深度学习在分割方面已经取得了无与伦比的成功。然而,获取注释被认为是昂贵的,特别是对于在目标区域通常具有高形态变化和不规则形状的组织病理学图像中。因此,使用稀疏点注释的弱监督学习有望减少注释工作量。在本文中,我们提出了一种基于对比度的变分模型,生成分割结果作为可靠的补充监督,用于训练组织病理学图像的深度分割模型。所提出的方法考虑到组织病理学图像中目标区域的共同特征,可以进行端到端方式的训练。它可以生成更具有地区一致性和平滑边界分割,并且对未标记的“新颖”区域更加稳健。对两个不同的组织病理学数据集上的实验证明了其与之前模型相比的有效性和效率。