In recent years, multi-scale generative adversarial networks (GANs) have been proposed to build generalized image processing models based on single sample. Constraining on the sample size, multi-scale GANs have much difficulty converging to the global optimum, which ultimately leads to limitations in their capabilities. In this paper, we pioneered the introduction of PAC-Bayes generalized bound theory into the training analysis of specific models under different adversarial training methods, which can obtain a non-vacuous upper bound on the generalization error for the specified multi-scale GAN structure. Based on the drastic changes we found of the generalization error bound under different adversarial attacks and different training states, we proposed an adaptive training method which can greatly improve the image manipulation ability of multi-scale GANs. The final experimental results show that our adaptive training method in this paper has greatly contributed to the improvement of the quality of the images generated by multi-scale GANs on several image manipulation tasks. In particular, for the image super-resolution restoration task, the multi-scale GAN model trained by the proposed method achieves a 100% reduction in natural image quality evaluator (NIQE) and a 60% reduction in root mean squared error (RMSE), which is better than many models trained on large-scale datasets.
翻译:近些年来,人们提议建立基于单一样本的多规模基因对抗网络(GANs),以建立通用图像处理模型。关于抽样规模,多规模GANs很难与全球最佳化相融合,最终导致其能力限制。在本文中,我们率先将PAC-Bayes通用约束理论引入不同对抗性培训方法下的具体模型的培训分析中,这些模型可以取得对特定多规模GAN结构一般化错误的无懈可移的上限。根据我们发现在不同对抗性攻击和不同培训状态下受普遍化错误约束的急剧变化,我们提出了适应性培训方法,可以大大提高多规模GANs的形象操纵能力。最后实验结果显示,我们在本文中的适应性培训方法极大地促进了多种规模GANs在几类图像操纵任务上产生的图像质量的提高。特别是,在图像超分辨率恢复任务中,由拟议方法培训的多规模GANS模型在自然图像质量模型中实现了100%的降低率,而经过培训的图像质量模型在60个比例上是高比例的。