Landmark Breaker:通过干扰Landmark Extraction来阻碍DeepFake

Pu Sun, Yuezun Li, H. Qi, Siwei Lyu
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引用次数: 9

摘要

深度神经网络(DNN)的最新发展显著提高了人工智能合成人脸的真实感,其中最著名的例子是DeepFakes。DeepFake技术可以从另一个对象的面部合成目标对象的面部,同时保留相同的面部属性。随着社交媒体门户网站(Facebook, Instagram等)的迅速增加,这些逼真的假脸在互联网上迅速传播,对社会造成了广泛的负面影响。在本文中,我们描述了Landmark Breaker,这是第一个专门用于破坏面部地标提取的方法,并将其应用于DeepFake视频生成的阻碍。我们的动机是破坏人脸地标提取会影响输入人脸的对齐,从而降低DeepFake的质量。我们的方法是使用对抗性扰动实现的。与DeepFake生成后才起作用的检测方法相比,Landmark Breaker在防止DeepFake生成方面领先一步。实验采用最新的Celeb-DF数据集,在三个最先进的面部地标提取器上进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Landmark Breaker: Obstructing DeepFake By Disturbing Landmark Extraction
The recent development of Deep Neural Networks (DNN) has significantly increased the realism of AI-synthesized faces, with the most notable examples being the DeepFakes. The DeepFake technology can synthesize a face of target subject from a face of another subject, while retains the same face attributes. With the rapidly increased social media portals (Facebook, Instagram, etc), these realistic fake faces rapidly spread though the Internet, causing a broad negative impact to the society. In this paper, we describe Landmark Breaker, the first dedicated method to disrupt facial landmark extraction, and apply it to the obstruction of the generation of DeepFake videos. Our motivation is that disrupting the facial landmark extraction can affect the alignment of input face so as to degrade the DeepFake quality. Our method is achieved using adversarial perturbations. Compared to the detection methods that only work after DeepFake generation, Landmark Breaker goes one step ahead to prevent DeepFake generation. The experiments are conducted on three state-of-the-art facial landmark extractors using the recent Celeb-DF dataset.
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