A network (CC-Net) based on complementary consistency training is proposed for semi-supervised left atrial image segmentation in this paper. From the perspective of complementary information, CC-Net efficiently utilizes unlabeled data and resolves the problem that semi-supervised segmentation algorithms currently in use have limited capacity to extract information from unlabeled data. A primary model and two complementary auxiliary models are part of the complementary symmetric structure of the CC-Net. The inter-model perturbation is formed between the main model and the auxiliary model to form complementary consistency training. The complementary information between the two auxiliary models helps the main model to focus on the fuzzy region effectively. Additionally, forcing consistency between the main model and the auxiliary models makes it easier to obtain decision boundaries with low uncertainty. CC-Net was validated in the benchmark dataset of the 2018 Atrial Segmentation Challenge. The Dice reached of 89.82% with 10% labeled data training and 91.27% with 20% labeled data training. By comparing with current state-of-the-art algorithms, CC-Net has the best segmentation performance and robustness. Our code is publicly available at https://github.com/Cuthbert-Huang/CC-Net.
翻译:以互补一致性培训为基础的网络(CC-Net)基于互补一致性培训,为本文中的半监督左左图像截面部分提议了一个基于互补一致性培训的网络(CC-Net)。从补充信息的角度出发,CC-Net高效地使用未贴标签的数据,并解决了目前使用的半监督分离算法从未贴标签数据中提取信息的能力有限的问题。初级模型和两个互补辅助模型是CC-Net互补的对称结构的一部分。主要模型和辅助模型之间形成了模型间扰动以形成互补一致性培训。两个辅助模型之间的补充信息有助于主要模型有效地侧重于模糊区域。此外,由于主要模型和辅助模型之间必须保持一致性,因此更容易在低不确定性的情况下获取决定边界。2018年审判分割挑战的基准数据集验证了CC-Net。达到89.82%,其中标有10%的数据培训,91.27%有20%的标定数据培训。通过比较目前的状态-艺术算法, CC-Net具有最佳的断面性功能和稳健性。我们的代码在 http-comgius/arbrubs/arberts。