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Do GANs Leave Artificial Fingerprints?

机译:GAN是否会留下人工指纹?

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摘要

In the last few years, generative adversarial networks (GAN) have shown tremendous potential for a number of applications in computer vision and related fields. With the current pace of progress, it is a sure bet they will soon be able to generate high-quality images and videos, virtually indistinguishable from real ones. Unfortunately, realistic GAN-generated images pose serious threats to security, to begin with a possible flood of fake multimedia, and multimedia forensic countermeasures are in urgent need. In this work, we show that each GAN leaves its specific fingerprint in the images it generates, just like real-world cameras mark acquired images with traces of their photo-response non-uniformity pattern. Source identification experiments with several popular GANs show such fingerprints to represent a precious asset for forensic analyses.
机译:在过去的几年中,生成对抗网络(GAN)在计算机视觉和相关领域的许多应用中显示了巨大的潜力。以当前的进展速度,可以肯定的是,他们很快将能够生成高质量的图像和视频,几乎与真实的图像和视频没有区别。不幸的是,由GAN生成的逼真的图像对安全性构成了严重威胁,首先可能出现大量的假冒多媒体,并且迫切需要采取多媒体法医对策。在这项工作中,我们证明了每个GAN在生成的图像中都保留了其特定的指纹,就像现实世界中的相机用其光响应非均匀模式的痕迹标记采集的图像一样。使用几种流行的GAN进行的源识别实验表明,这种指纹代表了法医分析的宝贵资产。

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