Identity-Referenced Deepfake Detection with Contrastive Learning

Dongyao Shen, Youjian Zhao, Chengbin Quan
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引用次数: 1

Abstract

With current advancements in deep learning technology, it is becoming easier to create high-quality face forgery videos, causing concerns about the misuse of deepfake technology. In recent years, research on deepfake detection has become a popular topic. Many detection methods have been proposed, most of which focus on exploiting image artifacts or frequency domain features for detection. In this work, we propose using real images of the same identity as a reference to improve detection performance. Specifically, a real image of the same identity is used as a reference image and input into the model together with the image to be tested to learn the distinguishable identity representation, which is achieved by contrastive learning. Our method achieves superior performance on both FaceForensics++ and Celeb-DF with relatively little training data, and also achieves very competitive results on cross-manipulation and cross-dataset evaluations, demonstrating the effectiveness of our solution.
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基于身份的深度假检测与对比学习
随着深度学习技术的进步,制作高质量的人脸伪造视频变得越来越容易,这引发了人们对深度伪造技术被滥用的担忧。近年来,对深度假检测的研究已成为一个热门话题。已经提出了许多检测方法,其中大多数都集中在利用图像伪影或频域特征进行检测。在这项工作中,我们建议使用相同身份的真实图像作为参考来提高检测性能。具体而言,将具有相同身份的真实图像作为参考图像,与待测图像一起输入到模型中,学习可区分的身份表示,通过对比学习实现。我们的方法在训练数据相对较少的情况下,在facefrensics ++和Celeb-DF上都取得了优异的性能,并且在交叉操作和跨数据集评估上也取得了非常有竞争力的结果,证明了我们的解决方案的有效性。
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