With the development of deep learning, medical image classification has been significantly improved. However, deep learning requires massive data with labels. While labeling the samples by human experts is expensive and time-consuming, collecting labels from crowd-sourcing suffers from the noises which may degenerate the accuracy of classifiers. Therefore, approaches that can effectively handle label noises are highly desired. Unfortunately, recent progress on handling label noise in deep learning has gone largely unnoticed by the medical image. To fill the gap, this paper proposes a noise-tolerant medical image classification framework named Co-Correcting, which significantly improves classification accuracy and obtains more accurate labels through dual-network mutual learning, label probability estimation, and curriculum label correcting. On two representative medical image datasets and the MNIST dataset, we test six latest Learning-with-Noisy-Labels methods and conduct comparative studies. The experiments show that Co-Correcting achieves the best accuracy and generalization under different noise ratios in various tasks. Our project can be found at: https://github.com/JiarunLiu/Co-Correcting.
翻译:随着深层学习的发展,医学图像分类有了显著改进;然而,深层学习需要大量使用标签的数据;虽然由人类专家给样本贴上标签既昂贵又费时,但从众包收集标签会因噪音降低分类者的准确性而受到影响;因此,非常希望采取能够有效处理标签噪音的办法;不幸的是,在深层学习过程中处理标签噪音方面最近取得的进展基本上没有被医学图像所注意到;为填补这一空白,本文件提议了一个名为 " 共同校正 " 的耐噪音医学图像分类框架,通过双网络相互学习、标签概率估计和课程校正,大大提高分类的准确性,并获得更准确的标签;在两个有代表性的医疗图像数据集和MNIST数据集上,我们测试了六种最新的用诺伊-Labels学习方法,并进行了比较研究;实验显示,在各种任务中,共同校正在不同的噪音比率下取得了最佳的准确性和普遍性。我们的项目可在以下网址上找到:https://github.com/JiarunLiu/Co-Corring。