The ever higher quality and wide diffusion of fake images have spawn a quest for reliable forensic tools. Many GAN image detectors have been proposed, recently. In real world scenarios, however, most of them show limited robustness and generalization ability. Moreover, they often rely on side information not available at test time, that is, they are not universal. We investigate these problems and propose a new GAN image detector based on a limited sub-sampling architecture and a suitable contrastive learning paradigm. Experiments carried out in challenging conditions prove the proposed method to be a first step towards universal GAN image detection, ensuring also good robustness to common image impairments, and good generalization to unseen architectures.
翻译:假图象质量和广泛传播的日益提高导致人们寻求可靠的法医工具,最近提出了许多GAN图像探测器。然而,在现实世界情景中,大多数图像显示的稳健性和一般化能力有限。此外,它们往往依赖测试时无法获得的侧面信息,即它们不是普遍性的。我们调查了这些问题,并根据有限的子抽样架构和适当的对比学习模式提出了一个新的GAN图像探测器。在具有挑战性的条件下进行的实验证明,拟议的方法是普遍GAN图像探测的第一步,同时也确保了对普通图像损伤的良好稳健性,以及对看不见的图像进行良好的概括化。