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An image augmentation approach using two-stage generative adversarial network for nuclei image segmentation

机译:使用两阶段生成对抗网络进行核图像分割的图像增强方法

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The major challenge in applying deep neural network techniques in the medical imaging domain is how to cope with small datasets and the limited amount of annotated samples. Data augmentation procedures that include conventional geometrical transformation based augmentation techniques and the recent image synthesis techniques using generative adversarial networks (GANs) can be employed to artificially increase the number of training images. This paper is focused on data augmentation for image segmentation task, which has an inherent challenge when compared to the conventional image classification task, due to its requirement to produce a corresponding mask for each generated image. To tackle the challenge of image-mask pair augmentation for image segmentation, this paper proposes a novel two-stage generative adversarial network. The proposed approach first employs a GAN to generate a synthesized binary mask, then incorporates this synthesized mask into the second GAN to perform a conditional generation of the synthesized image. Thus, these two GANs collaborate to generate the synthesized image-mask pairs, which are used to improve the performance of the conventional image segmentation approaches. The proposed approach is evaluated using the cell nuclei image segmentation task and demonstrates the superior performance to outperform both the traditional augmentation methods and the existing GAN-based augmentation methods in extensive results conducted using the benchmark Kaggle cell nuclei image segmentation dataset. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在医学成像领域中应用深度神经网络技术的主要挑战是如何应对小型数据集和数量有限的带注释的样本。可以使用包括传统的基于几何变换的增强技术和使用生成对抗网络(GAN)的最新图像合成技术的数据增强程序来人为地增加训练图像的数量。本文专注于图像分割任务的数据增强,与传统的图像分类任务相比,它具有固有的挑战,因为它需要为每个生成的图像生成相应的蒙版。为了解决图像掩模对增强对图像分割的挑战,本文提出了一种新颖的两阶段生成对抗网络。所提出的方法首先采用GAN生成合成二进制掩码,然后将该合成掩码合并到第二GAN中以执行有条件的合成图像生成。因此,这两个GAN协作以生成合成的图像掩模对,这些对被用来提高常规图像分割方法的性能。使用细胞核图像分割任务对提出的方法进行了评估,并证明了在使用基准Kaggle细胞核图像分割数据集进行的广泛研究结果中,其性能优于传统的扩增方法和现有的基于GAN的扩增方法。 (C)2019 Elsevier Ltd.保留所有权利。

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