Generative Adversarial Networks (GANs) are the most popular models for image generation by optimizing discriminator and generator jointly and gradually. However, instability in training process is still one of the open problems for all GAN-based algorithms. In order to stabilize training, some regularization and normalization techniques have been proposed to make discriminator meet the Lipschitz continuity constraint. In this paper, a new approach inspired by works on adversarial attack is proposed to stabilize the training process of GANs. It is found that sometimes the images generated by the generator play a role just like adversarial examples for discriminator during the training process, which might be a part of the reason of the unstable training. With this discovery, we propose to introduce a adversarial training method into the training process of GANs to improve its stabilization. We prove that this DAT can limit the Lipschitz constant of the discriminator adaptively. The advanced performance of the proposed method is verified on multiple baseline and SOTA networks, such as DCGAN, WGAN, Spectral Normalization GAN, Self-supervised GAN and Information Maximum GAN.
翻译:在本文中,根据对抗性攻击的工程,提出了一种新的方法,以稳定GANs的培训过程。发现发电机产生的图像有时起着作用,就像在培训过程中歧视者的对抗性例子一样,这可能是培训过程不稳定的原因之一。随着这一发现,我们提议在GANs的培训过程中采用对抗性培训方法,以提高其稳定性。我们证明,DAT可以限制歧视者的Lipschitz常态适应性。拟议方法的先进性能在多个基线网络和SOTA网络上得到验证,例如DCGAN、WGAN、Spectral 正常化GAN、自上型GAN和最大GAN信息网络上得到验证。