组织病理图像中细胞核半监督分割的交叉斑块密集对比学习

Huisi Wu, Zhaoze Wang, Youyi Song, L. Yang, Jing Qin
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引用次数: 29

摘要

我们研究了半监督学习问题,使用少量标记数据和大量未标记数据来训练网络,通过开发交叉补丁密集对比学习框架,在组织病理图像中分割细胞核。该任务的动机是昂贵的负担收集标记数据的组织病理图像分割任务。我们的方法的关键思想是对齐教师和学生网络的特征,从补丁和像素级的交叉图像中采样,以加强类内的紧凑性和类间的特征可分离性,正如我们所示,这有助于从未标记的数据中提取有价值的知识。我们还设计了一种新的优化框架,结合一致性正则化和熵最小化技术,在消除梯度消失方面表现出良好的性能。我们在两个公开可用的数据集上评估了所提出的方法,并在广泛的实验中获得了积极的结果,优于最先进的方法。代码可在https://github.com/zzw-szu/CDCL上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-patch Dense Contrastive Learning for Semi-supervised Segmentation of Cellular Nuclei in Histopathologic Images
We study the semi-supervised learning problem, using a few labeled data and a large amount of unlabeled data to train the network, by developing a cross-patch dense contrastive learning framework, to segment cellular nuclei in histopathologic images. This task is motivated by the expensive burden on collecting labeled data for histopathologic image segmentation tasks. The key idea of our method is to align features of teacher and student networks, sampled from cross-image in both patch- and pixel-levels, for enforcing the intra-class compactness and inter-class separability of features that as we shown is helpful for extracting valuable knowledge from unlabeled data. We also design a novel optimization framework that combines consistency regularization and entropy minimization techniques, showing good property in eviction of gradient vanishing. We assess the proposed method on two publicly available datasets, and obtain positive results on extensive experiments, outperforming the state-of-the-art methods. Codes are available at https://github.com/zzw-szu/CDCL.
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