Although the recent advancement in generative models brings diverse advantages to society, it can also be abused with malicious purposes, such as fraud, defamation, and fake news. To prevent such cases, vigorous research is conducted to distinguish the generated images from the real images, but challenges still remain to distinguish the unseen generated images outside of the training settings. Such limitations occur due to data dependency arising from the model's overfitting issue to the training data generated by specific GANs. To overcome this issue, we adopt a self-supervised scheme to propose a novel framework. Our proposed method is composed of the artificial fingerprint generator reconstructing the high-quality artificial fingerprints of GAN images for detailed analysis, and the GAN detector distinguishing GAN images by learning the reconstructed artificial fingerprints. To improve the generalization of the artificial fingerprint generator, we build multiple autoencoders with different numbers of upconvolution layers. With numerous ablation studies, the robust generalization of our method is validated by outperforming the generalization of the previous state-of-the-art algorithms, even without utilizing the GAN images of the training dataset.
翻译:虽然最近基因模型的进步给社会带来了多种好处,但它也可能被恶意目的所滥用,例如欺诈、诽谤和假新闻。为防止这类案件,进行了有力的研究,将产生的图像与真实图像区分开来,但区分培训环境外的无形图像仍然存在挑战。这些限制是由于模型与特定GANs产生的培训数据过于匹配而导致的数据依赖。为了克服这一问题,我们采取了一个自我监督的计划,以提出一个新的框架。我们提议的方法包括人工指纹生成器重建GAN图像的高质量人工指纹以进行详细分析,GAN探测器通过学习重建的人工指纹来区分GAN图像。为了改进人工指纹生成器的普及,我们建造了多个数字不一的自动合成器。通过无数的匹配研究,我们方法的强有力普及得到了验证,因为我们完成了对以往最新算法的普遍化,即使没有使用培训数据集的GAN图像。