论文标题

假冒者:通过浅层重建使深泡沫更具检测性渗透

FakePolisher: Making DeepFakes More Detection-Evasive by Shallow Reconstruction

论文作者

Huang, Yihao, Juefei-Xu, Felix, Wang, Run, Guo, Qing, Ma, Lei, Xie, Xiaofei, Li, Jianwen, Miao, Weikai, Liu, Yang, Pu, Geguang

论文摘要

目前,基于GAN的图像生成方法仍然不完善,其上采样设计在合成图像中留下某些某些人工制品模式有局限性。 (通过最近的方法)可以轻松利用这种伪影模式来检测真实和GAN合成图像的差异。但是,现有的检测方法非常重视人工模式,如果减少了这种伪影模式,它们可能会徒劳。为了减少合成图像中的工件,在本文中,我们设计了一种简单而强大的方法,称为假冒者,该方法通过学习的线性词典对假图像进行浅重建,以有效,有效地减少图像合成过程中引入的工件。对3种最新的深层检测方法和由16种受欢迎的基于GAN的假伪造生成技术产生的伪造图像的全面评估,证明了我们的技术的有效性。通过减少人工图案,我们的技术大大降低了3种态度的伪造图像检测方法的准确性,即平均和93%的案例。

At this moment, GAN-based image generation methods are still imperfect, whose upsampling design has limitations in leaving some certain artifact patterns in the synthesized image. Such artifact patterns can be easily exploited (by recent methods) for difference detection of real and GAN-synthesized images. However, the existing detection methods put much emphasis on the artifact patterns, which can become futile if such artifact patterns were reduced. Towards reducing the artifacts in the synthesized images, in this paper, we devise a simple yet powerful approach termed FakePolisher that performs shallow reconstruction of fake images through a learned linear dictionary, intending to effectively and efficiently reduce the artifacts introduced during image synthesis. The comprehensive evaluation on 3 state-of-the-art DeepFake detection methods and fake images generated by 16 popular GAN-based fake image generation techniques, demonstrates the effectiveness of our technique.Overall, through reducing artifact patterns, our technique significantly reduces the accuracy of the 3 state-of-the-art fake image detection methods, i.e., 47% on average and up to 93% in the worst case.

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