Proactive Deepfake Defence via Identity Watermarking

Yuan Zhao, Bo Liu, Ming Ding, Baoping Liu, Tianqing Zhu, Xin Yu
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引用次数: 5

Abstract

The explosive progress of Deepfake techniques poses unprecedented privacy and security risks to our society by creating real-looking but fake visual content. The current Deepfake detection studies are still in their infancy because they mainly rely on capturing artifacts left by a Deepfake synthesis process as detection clues, which can be easily removed by various distortions (e.g. blurring) or advanced Deepfake techniques. In this paper, we propose a novel method that does not depend on identifying the artifacts but resorts to the mechanism of anti-counterfeit labels to protect face images from malicious Deepfake tampering. Specifically, we design a neural network with an encoder-decoder structure to embed watermarks as anti-Deepfake labels into the facial identity features. The injected label is entangled with the facial identity feature, so it will be sensitive to face swap translations (i.e., Deepfake) and robust to conventional image modifications (e.g., resize and compress). Therefore, we can identify whether watermarked images have been tampered with by Deepfake methods according to the label’s existence. Experimental results demonstrate that our method can achieve average detection accuracy of more than 80%, which validates the proposed method’s effectiveness in implementing Deepfake detection.
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基于身份水印的主动深度伪造防御
Deepfake技术的爆炸式发展创造了看似真实但虚假的视觉内容,给我们的社会带来了前所未有的隐私和安全风险。目前的Deepfake检测研究仍处于起步阶段,因为它们主要依赖于捕获Deepfake合成过程中留下的伪影作为检测线索,这些伪影很容易通过各种失真(例如模糊)或先进的Deepfake技术去除。在本文中,我们提出了一种新的方法,它不依赖于识别伪像,而是利用防伪标签的机制来保护人脸图像免受恶意Deepfake篡改。具体来说,我们设计了一个具有编码器-解码器结构的神经网络,将水印作为抗deepfake标签嵌入到面部身份特征中。注入的标签与面部身份特征纠缠在一起,因此它对人脸交换翻译(即Deepfake)敏感,对传统的图像修改(例如调整大小和压缩)稳健。因此,我们可以根据标签的存在来判断水印图像是否被Deepfake方法篡改过。实验结果表明,该方法的平均检测准确率达到80%以上,验证了该方法在实现Deepfake检测方面的有效性。
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