While Generative Adversarial Networks (GANs) show increasing performance and the level of realism is becoming indistinguishable from natural images, this also comes with high demands on data and computation. We show that state-of-the-art GAN models -- such as they are being publicly released by researchers and industry -- can be used for a range of applications beyond unconditional image generation. We achieve this by an iterative scheme that also allows gaining control over the image generation process despite the highly non-linear latent spaces of the latest GAN models. We demonstrate that this opens up the possibility to re-use state-of-the-art, difficult to train, pre-trained GANs with a high level of control even if only black-box access is granted. Our work also raises concerns and awareness that the use cases of a published GAN model may well reach beyond the creators' intention, which needs to be taken into account before a full public release.
翻译:创世的Adversarial Networks(GANs)表现越来越好,现实主义水平越来越难以与自然图像区分,但与此同时,对数据和计算的需求也很高。我们显示,最先进的GAN模型 -- -- 例如研究人员和工业界公开发布这些模型 -- -- 可用于无条件生成图像以外的一系列应用。我们通过一个迭接机制实现这一点,这个机制也能够控制图像生成过程,尽管最新的GAN模型具有高度非线性潜伏空间。我们证明,这开启了重新使用最先进的、难以培训、经过预先培训、拥有高度控制的GAN的可能性,即使只允许黑箱访问。我们的工作还使人们担心并意识到,已公布的GAN模型的使用案例很可能超出创造者的意图,在完全公开发布之前需要加以考虑。