Biomedical image segmentation plays a significant role in computer-aided diagnosis. However, existing CNN based methods rely heavily on massive manual annotations, which are very expensive and require huge human resources. In this work, we adopt a coarse-to-fine strategy and propose a self-supervised correction learning paradigm for semi-supervised biomedical image segmentation. Specifically, we design a dual-task network, including a shared encoder and two independent decoders for segmentation and lesion region inpainting, respectively. In the first phase, only the segmentation branch is used to obtain a relatively rough segmentation result. In the second step, we mask the detected lesion regions on the original image based on the initial segmentation map, and send it together with the original image into the network again to simultaneously perform inpainting and segmentation separately. For labeled data, this process is supervised by the segmentation annotations, and for unlabeled data, it is guided by the inpainting loss of masked lesion regions. Since the two tasks rely on similar feature information, the unlabeled data effectively enhances the representation of the network to the lesion regions and further improves the segmentation performance. Moreover, a gated feature fusion (GFF) module is designed to incorporate the complementary features from the two tasks. Experiments on three medical image segmentation datasets for different tasks including polyp, skin lesion and fundus optic disc segmentation well demonstrate the outstanding performance of our method compared with other semi-supervised approaches. The code is available at https://github.com/ReaFly/SemiMedSeg.
翻译:生物医学图像分割在计算机辅助诊断中起着重要作用。 但是,基于CNN的现有方法在很大程度上依赖大量人工说明,这些说明非常昂贵,需要大量人力资源。 在这项工作中,我们采用了粗到软的战略,并提出了半监督的生物医学图像分割的自我监督校正学习模式。具体地说,我们设计了一个双任务网络,包括一个共用的编码器和两个独立的解析器,分别用于分解和分解区域。在第一阶段,只有分解分支部门用来取得相对粗略的分解结果。在第二步,我们用最初分解图上的原始图像掩盖所检测到的偏差区域,并将它与原始图像一起发送到网络,同时进行分解和分解。对于标签数据,这一过程由分解说明和不贴标签数据加以监督。由于两个任务依赖于类似的特征信息,未加标签的分解分解/分解方法有效地加强了在原始分解图上检测到的偏差区域。 将网络的分解面图解分为三部分的分解面图的分解面面图, 改进了我们现有的分解/分解的分解方法。