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High-Resolution Generative Adversarial Neural Networks Applied to Histological Images Generation

机译:高分辨率的生成对抗性神经网络应用于组织学图像的生成

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For many years, synthesizing photo-realistic images has been a highly relevant task due to its multiple applications from aesthetic or artistic [19] to medical purposes [1,6,21]. Related to the medical area, this application has had greater impact because most classification or diagnostic algorithms require a significant amount of highly specialized images for their training yet obtaining them is not easy at all. To solve this problem, many works analyze and interpret images of a specific topic in order to obtain a statistical correlation between the variables that define it. By this way, any set of variables close to the map generated in the previous analysis represents a similar image. Deep learning based methods have allowed the automatic extraction of feature maps which has helped in the design of more robust models photo-realistic image synthesis. This work focuses on obtaining the best feature maps for automatic generation of synthetic histological images. To do so, we propose a Generative Adversarial Networks (GANs) [8] to generate the new sample distribution using the feature maps obtained by an autoencoder [14,20] as latent space instead of a completely random one. To corroborate our results, we present the generated images against the real ones and their respective results using different types of autoencoder to obtain the feature maps.
机译:多年来,由于从美学或艺术[19]到医学目的的多种应用,合成照片 - 现实图像是一种高度相关的任务[1,6,21]。与医疗区有关,此申请具有更大的影响,因为大多数分类或诊断算法需要大量高度专业的图像,但根本不容易。为了解决这个问题,许多工作分析和解释特定主题的图像,以便在定义它的变量之间获得统计相关性。通过这种方式,靠近先前分析中生成的地图的任何一组变量表示类似的图像。基于深度学习的方法允许自动提取特征图,该特征图已经有助于更强大的模型照片 - 现实图像合成。这项工作侧重于获得自动生成合成组织学图像的最佳特征图。为此,我们提出了一种生成的对抗性网络(GANS)[8],使用AutoEncoder [14,20]获得的特征映射作为潜在空间而不是完全随机的,生成新的样本分布。为了证实我们的结果,我们将生成的图像与真实的图像及其不同类型的AutoEncoder呈现了其各自的结果以获得特征映射。

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