Recent work has increased the performance of Generative Adversarial Networks (GANs) by enforcing a consistency cost on the discriminator. We improve on this technique in several ways. We first show that consistency regularization can introduce artifacts into the GAN samples and explain how to fix this issue. We then propose several modifications to the consistency regularization procedure designed to improve its performance. We carry out extensive experiments quantifying the benefit of our improvements. For unconditional image synthesis on CIFAR-10 and CelebA, our modifications yield the best known FID scores on various GAN architectures. For conditional image synthesis on CIFAR-10, we improve the state-of-the-art FID score from 11.48 to 9.21. Finally, on ImageNet-2012, we apply our technique to the original BigGAN model and improve the FID from 6.66 to 5.38, which is the best score at that model size.
翻译:最近的工作提高了General Adversarial Networks(GANs)的绩效,对歧视者实施一致成本,我们以几种方式改进了这一技术。我们首先表明,一致性规范化可以将艺术品引入GAN样本,并解释如何解决这个问题。我们然后提议对一致性规范化程序进行若干修改,以改善其绩效。我们进行了广泛的实验,量化了改进的好处。为了对CIFAR-10和CelibA进行无条件的图像合成,我们的修改产生了各种GAN结构中最著名的FID分数。关于CIFAR-10的有条件图像合成,我们改进了FID的最新分数,从11.48到9.21。最后,在图像网络-2012上,我们将我们的技术应用到原始的BIGAN模型,并将FID从6.66到5.38,这是该模型规模的最佳分数。