论文标题
GAN培训的图像增强
Image Augmentations for GAN Training
论文作者
论文摘要
数据增强已被广泛研究,以提高分类器的准确性和鲁棒性。然而,在先前的研究中尚未对图像增强图像合成的GAN模型的潜力进行彻底研究。在这项工作中,我们系统地研究了各种环境中各种现有的增强技术对GAN培训的有效性。我们提供了有关如何通过正规化的香草甘人和gan的图像增强图像的见解和准则,从而大大提高了生成的图像的忠诚度。令人惊讶的是,如果我们在真实图像和生成的图像上都使用增强量,我们发现香草gan的发电质量与最新的最新结果相同。当这种GAN训练与其他基于增强的正则化技术(例如对比损失和一致性正则化)相结合时,增强量进一步提高了产生的图像的质量。我们为在CIFAR-10上有条件生成提供了新的最新结果,既有一致性损失又是对比度损失。
Data augmentations have been widely studied to improve the accuracy and robustness of classifiers. However, the potential of image augmentation in improving GAN models for image synthesis has not been thoroughly investigated in previous studies. In this work, we systematically study the effectiveness of various existing augmentation techniques for GAN training in a variety of settings. We provide insights and guidelines on how to augment images for both vanilla GANs and GANs with regularizations, improving the fidelity of the generated images substantially. Surprisingly, we find that vanilla GANs attain generation quality on par with recent state-of-the-art results if we use augmentations on both real and generated images. When this GAN training is combined with other augmentation-based regularization techniques, such as contrastive loss and consistency regularization, the augmentations further improve the quality of generated images. We provide new state-of-the-art results for conditional generation on CIFAR-10 with both consistency loss and contrastive loss as additional regularizations.