论文标题
与域移动中的医疗图像细分中的损坏标签的交叉降级网络
Cross-denoising Network against Corrupted Labels in Medical Image Segmentation with Domain Shift
论文作者
论文摘要
深度卷积神经网络(DCNN)在分割任务中贡献了许多突破,尤其是在医学成像领域。但是,\ textIt {域移位}和\ textit {损坏的注释},这是医学成像中的两个常见问题,在实践中极大地降低了DCNN的性能。在本文中,我们建议使用两个同行网络通过同行评审策略来解决域移动和损坏的标签问题,提出一个新颖的可靠交叉淘汰框架。具体而言,每个网络都作为导师,相互监督,以从同伴网络选择的可靠样本中学习,以用损坏的标签对抗。此外,提出了耐噪声的损失,以鼓励网络捕获关键位置并在各种噪声 - 抗激素标签下过滤差异。为了进一步减少累积错误,我们使用班级级别的最自信的预测引入了类失去平衡的交叉学习。有关视盘(OD)和视杯(OC)分割的避难和drishti-GS数据集的实验结果证明了我们提出的方法对最先进的方法的出色表现。
Deep convolutional neural networks (DCNNs) have contributed many breakthroughs in segmentation tasks, especially in the field of medical imaging. However, \textit{domain shift} and \textit{corrupted annotations}, which are two common problems in medical imaging, dramatically degrade the performance of DCNNs in practice. In this paper, we propose a novel robust cross-denoising framework using two peer networks to address domain shift and corrupted label problems with a peer-review strategy. Specifically, each network performs as a mentor, mutually supervised to learn from reliable samples selected by the peer network to combat with corrupted labels. In addition, a noise-tolerant loss is proposed to encourage the network to capture the key location and filter the discrepancy under various noise-contaminant labels. To further reduce the accumulated error, we introduce a class-imbalanced cross learning using most confident predictions at the class-level. Experimental results on REFUGE and Drishti-GS datasets for optic disc (OD) and optic cup (OC) segmentation demonstrate the superior performance of our proposed approach to the state-of-the-art methods.