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On Data Augmentation for GAN Training

机译:关于GaN培训的数据增强

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Recent successes in Generative Adversarial Networks (GAN) have affirmed the importance of using more data in GAN training. Yet it is expensive to collect data in many domains such as medical applications. Data Augmentation (DA) has been applied in these applications. In this work, we first argue that the classical DA approach could mislead the generator to learn the distribution of the augmented data, which could be different from that of the original data. We then propose a principled framework, termed Data Augmentation Optimized for GAN (DAG), to enable the use of augmented data in GAN training to improve the learning of the original distribution. We provide theoretical analysis to show that using our proposed DAG aligns with the original GAN in minimizing the Jensen–Shannon (JS) divergence between the original distribution and model distribution. Importantly, the proposed DAG effectively leverages the augmented data to improve the learning of discriminator and generator. We conduct experiments to apply DAG to different GAN models: unconditional GAN, conditional GAN, self-supervised GAN and CycleGAN using datasets of natural images and medical images. The results show that DAG achieves consistent and considerable improvements across these models. Furthermore, when DAG is used in some GAN models, the system establishes state-of-the-art Fréchet Inception Distance (FID) scores. Our code is available ( https://github.com/tntrung/dag-gans ).
机译:生成的对策网络(GAN)的最近成功肯定了使用GaN培训中使用更多数据的重要性。然而,在许多域中收集数据如医疗应用。数据增强(DA)已应用于这些应用程序。在这项工作中,我们首先争辩说,经典DA方法可以误导发电机来学习增强数据的分布,这可能与原始数据的分布不同。然后,我们提出了一个主要的框架,称为GaN(DAG)的数据增强,以使得能够在GaN培训中使用增强数据来改善<斜视XMLNS:MML =“http://www.w3.org/的学习1998 / math / mathml“xmlns:xlink =”http://www.w3.org/1999/xlink“>原始分发。我们提供理论分析,表明,使用我们建议的DAG与原来的GaN对齐,从而最大限度地减少<斜视XMLNS:MML =“http://www.w3.org/1998/math/mathml之间的jensen-shannon(js)发散“xmlns:xlink =”http://www.w3.org/1999/xlink“>原始分发和模型分布。重要的是,拟议的DAG有效利用增强数据来改善鉴别者和发电机的学习。我们进行实验,将DAG应用于不同的GaN模型:无条件GaN,有条件的GaN,自然图像数据集和医学图像的自我监督GaN和Crycegan。结果表明,DAG在这些模型中实现了一致和相当大的改进。此外,当在某些GaN模型中使用DAG时,系统建立了最先进的FRéchet成立距离(FID)分数。我们的代码可用( https: //github.com/tntrung/dag-gans )。

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