Generating High-Resolution Chest X-ray Images Using CGAN

Haneen M. Mohammed, Khawla H. Ali
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Abstract

Deep Learning (DL) models have outperformed remarkably and effectively on several Computers Vision applications. However, these models require large amounts of data to avoid overfitting problems. Overfitting happens when a network trains a function with an incredibly high variance to represent the training data perfectly. Consequently, medical images lack to availability of large labeled datasets, and the annotation of medical images is expensive and time-consuming for experts, as the COVID-19 virus is an infectious disease, these datasets are scarce and it is difficult to get large datasets. The limited amount of the COVID-19 class compared to any other classes, for example (healthy). To solve the scarcity data problem, we adjust a Conditional Generative Adversarial Network (CGAN) as a solution to the problems of scarcity and limited data. CGAN contains two neural networks: a generator that creates synthetic (fake) images, and a discriminator that recognizes a real sample of training and a generated sample from the generator. The adjusted CGAN is able to Generate synthetic images with high resolution and close to the original images which aid in expanding the limited dataset specific to a new pandemic. In addition to CGAN augmenting strategies, this research also briefly explores additional aspects of data augmentation like time augmentation and total dataset size. Frechet inception distance metric (FID) has been used for evaluating synthetic images generated by CGAN. The adjusted CGAN obtains better FID results for the high-resolution synthetic X-rays images it achieves 2.349%.
使用CGAN生成高分辨率胸部x射线图像
深度学习(DL)模型在许多计算机视觉应用中都表现得非常出色和有效。然而,这些模型需要大量的数据来避免过拟合问题。当一个网络训练一个具有难以置信的高方差的函数来完美地表示训练数据时,就会发生过拟合。因此,医学图像缺乏大型标记数据集的可用性,并且医学图像的注释对于专家来说是昂贵和耗时的,因为COVID-19病毒是一种传染病,这些数据集很少,很难获得大型数据集。与任何其他类别相比,COVID-19类别的数量有限,例如(健康)。为了解决数据稀缺问题,我们调整了一种条件生成对抗网络(CGAN)作为数据稀缺和有限问题的解决方案。CGAN包含两个神经网络:一个生成合成(假)图像的生成器,以及一个识别真实训练样本和生成器生成样本的判别器。调整后的CGAN能够生成高分辨率和接近原始图像的合成图像,这有助于扩展特定于新流行病的有限数据集。除了CGAN增强策略外,本研究还简要探讨了数据增强的其他方面,如时间增强和总数据集大小。Frechet初始距离度量(FID)被用于评价由CGAN生成的合成图像。调整后的CGAN对高分辨率合成x射线图像的FID效果较好,达到2.349%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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