Proposed are alternative generator architectures for Boundary Equilibrium Generative Adversarial Networks, motivated by Learning from Simulated and Unsupervised Images through Adversarial Training. It disentangles the need for a noise-based latent space. The generator will operate mainly as a refiner network to gain a photo-realistic presentation of the given synthetic images. It also attempts to resolve the latent space's poorly understood properties by eliminating the need for noise injection and replacing it with an image-based concept. The new flexible and simple generator architecture will also give the power to control the trade-off between restrictive refinement and expressiveness ability. Contrary to other available methods, this architecture will not require a paired or unpaired dataset of real and synthetic images for the training phase. Only a relatively small set of real images would suffice.
翻译:提议的是利用模拟和无监督图像培训,从模拟和无监督图像中学习,为边界平衡生成反对流网络开发替代发电机结构,它分散了对以噪音为基础的潜伏空间的需求;发电机将主要作为一个精炼网络运作,以获得对给定合成图像的摄影现实展示;它还试图通过消除注入噪音的需要,用图像概念取而代之,解决潜在空间不易理解的特性;新的灵活和简单的发电机结构还将赋予控制限制性改进和直观能力之间的权衡权;与其他现有方法相反,这一结构将不需要在培训阶段对齐或对齐的、对齐的、对齐的、对齐的、对齐的、对准的、真实和合成图像的数据集;只有相对小的一套真实图像才足够。