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CNN-Generated Images Are Surprisingly Easy to Spot… for Now

机译:令人惊讶的是,CNN生成的图像现在很容易发现

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In this work we ask whether it is possible to create a "universal" detector for telling apart real images from these generated by a CNN, regardless of architecture or dataset used. To test this, we collect a dataset consisting of fake images generated by 11 different CNN-based image generator models, chosen to span the space of commonly used architectures today (ProGAN, StyleGAN, BigGAN, CycleGAN, StarGAN, GauGAN, DeepFakes, cascaded refinement networks, implicit maximum likelihood estimation, second-order attention super-resolution, seeing-in-the-dark). We demonstrate that, with careful pre- and post-processing and data augmentation, a standard image classifier trained on only one specific CNN generator (ProGAN) is able to generalize surprisingly well to unseen architectures, datasets, and training methods (including the just released StyleGAN2). Our findings suggest the intriguing possibility that today's CNN-generated images share some common systematic flaws, preventing them from achieving realistic image synthesis.
机译:在这项工作中,我们询问是否有可能创建一个“通用”检测器,以区分CNN生成的真实图像,而与所使用的体系结构或数据集无关。为了测试这一点,我们收集了一个由11个基于CNN的图像生成器模型生成的伪图像组成的数据集,这些模型被选择来跨越当今常用架构的空间(ProGAN,StyleGAN,BigGAN,CycleGAN,StarGAN,GauGAN,DeepFakes,级联精炼)网络,隐式最大似然估计,二阶注意力超分辨率,黑暗中看到)。我们证明,经过精心的预处理和后处理以及数据增强,仅在一个特定的CNN生成器(ProGAN)上进行训练的标准图像分类器就可以令人惊奇地将其很好地推广到看不见的体系结构,数据集和训练方法(包括刚刚发布的StyleGAN2)。我们的发现表明,当今的CNN生成的图像存在一些常见的系统缺陷,从而阻止了它们实现逼真的图像合成的可能性,这极具吸引力。

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