Despite the success of generative adversarial networks (GANs) for image generation, the trade-off between visual quality and image diversity remains a significant issue. This paper achieves both aims simultaneously by improving the stability of training GANs. The key idea of the proposed approach is to implicitly regularize the discriminator using representative features. Focusing on the fact that standard GAN minimizes reverse Kullback-Leibler (KL) divergence, we transfer the representative feature, which is extracted from the data distribution using a pre-trained autoencoder (AE), to the discriminator of standard GANs. Because the AE learns to minimize forward KL divergence, our GAN training with representative features is influenced by both reverse and forward KL divergence. Consequently, the proposed approach is verified to improve visual quality and diversity of state of the art GANs using extensive evaluations.
翻译:尽管图像生成的基因对抗网络(GANs)取得了成功,但视觉质量和图像多样性之间的权衡仍然是一个重要的问题,本文件通过提高培训GANs的稳定性而同时实现这两个目标。拟议方法的关键思想是隐含地规范使用代表性特征的歧视问题。我们注重的是标准GAN最大限度地减少Kullback-Leiber(KL)差异,我们将代表性特征从数据分发中提取,使用经过预先培训的自动编码器(AE)提取给标准GANs的歧视问题。由于AE学会最大限度地减少KL差异,我们具有代表性特征的GAN培训受到KL差异的反向和前向影响。因此,对拟议方法进行了核实,以便利用广泛的评价,提高GANs的视觉质量和多样性。