Most of the state-of-the-art semantic segmentation reported in recent years is based on fully supervised deep learning in the medical domain. How?ever, the high-quality annotated datasets require intense labor and domain knowledge, consuming enormous time and cost. Previous works that adopt semi?supervised and unsupervised learning are proposed to address the lack of anno?tated data through assisted training with unlabeled data and achieve good perfor?mance. Still, these methods can not directly get the image annotation as doctors do. In this paper, inspired by self-training of semi-supervised learning, we pro?pose a novel approach to solve the lack of annotated data from another angle, called medical image pixel rearrangement (short in MIPR). The MIPR combines image-editing and pseudo-label technology to obtain labeled data. As the number of iterations increases, the edited image is similar to the original image, and the labeled result is similar to the doctor annotation. Therefore, the MIPR is to get labeled pairs of data directly from amounts of unlabled data with pixel rearrange?ment, which is implemented with a designed conditional Generative Adversarial Networks and a segmentation network. Experiments on the ISIC18 show that the effect of the data annotated by our method for segmentation task is is equal to or even better than that of doctors annotations
翻译:近些年来报告的大多数最先进的语义分割法都是基于在医学领域充分监督的深层次学习。 从何而来,高质量的附加说明的数据集需要密集的劳动和领域知识,耗费大量的时间和成本。 采用半? 监督和未经监督的学习方法的以往作品建议通过辅助培训解决缺乏无记名数据的问题, 使用未贴标签的数据, 并实现良好的渗透。 然而, 这些方法不能像医生那样直接获得图像注释。 在本文中, 受半监督学习自我培训的启发, 我们提出? 采用新颖的方法从另一个角度解决缺少附加说明的数据的问题, 称为医学像素重新排列( MIPR 的短期 ) 。 MIPR 将图像编辑和假标签技术结合起来, 以获得标签数据。 随着迭代增加, 编辑图像与原始图像相似, 标签结果与医生注解相似。 因此, MIPR 将标签的配对数据配置配对, 直接从一个不成熟的版本中, 将数据配置为磁标定的版本 。