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Data Augmentation for Histopathological Images Based on Gaussian-Laplacian Pyramid Blending

机译:基于高斯-拉普拉斯金字塔融合的组织病理学图像数据增强

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Data imbalance is a major problem that affects several machine learning (ML) algorithms. Such a problem is troublesome because most of the ML algorithms attempt to optimize a loss function that does not take into account the data imbalance. Accordingly, the ML algorithm simply generates a trivial model that is biased toward predicting the most frequent class in the training data. In the case of histopathologic images (HIs), both low-level and high-level data augmentation (DA) techniques still present performance issues when applied in the presence of inter-patient variability; whence the model tends to learn color representations, which is related to the staining process. In this paper, we propose a novel approach capable of not only augmenting HI dataset but also distributing the inter-patient variability by means of image blending using the Gaussian-Laplacian pyramid. The proposed approach consists of finding the Gaussian pyramids of two images of different patients and finding the Laplacian pyramids thereof. Afterwards, the left-half side and the right-half side of different HIs are joined in each level of the Laplacian pyramid, and from the joint pyramids, the original image is reconstructed. This composition combines the stain variation of two patients, avoiding that color differences mislead the learning process. Experimental results on the BreakHis dataset have shown promising gains vis-à-vis the majority of DA techniques presented in the literature.
机译:数据不平衡是影响几种机器学习(ML)算法的主要问题。这样的问题很麻烦,因为大多数ML算法都试图优化不考虑数据不平衡性的损失函数。因此,ML算法仅生成一个琐碎的模型,该模型偏向于预测训练数据中最频繁的班级。就组织病理学图像(HIs)而言,当在患者之间存在差异时应用低级和高级数据增强(DA)技术仍然存在性能问题。因此,模型倾向于学习颜色表示,这与染色过程有关。在本文中,我们提出了一种新颖的方法,该方法不仅可以增强HI数据集,而且还可以通过使用高斯-拉普拉斯金字塔进行图像融合来分配患者之间的变异性。所提出的方法包括找到不同患者的两个图像的高斯金字塔和找到其拉普拉斯金字塔。然后,将不同HI的左半边和右半边在拉普拉斯金字塔的每个层次中合并,然后从联合金字塔中重建原始图像。这种成分结合了两名患者的色斑变化,避免了颜色差异误导学习过程。 BreakHis数据集上的实验结果表明,与文献中介绍的大多数DA技术相比,其发展前景可观。

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