FakeFilter:一种具有域自适应的交叉分布深度假检测系统

Jianguo Jiang, Boquan Li, Baole Wei, Gang Li, Chao Liu, Wei-qing Huang, Meimei Li, Min Yu
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引用次数: 1

摘要

人脸交换技术的滥用对数字视觉媒体的完整性和真实性构成了严重威胁。更令人担忧的是,通过深度学习技术(也称为Deepfakes)制作的假图像或视频更加逼真,质量更高,并且几乎没有显示篡改痕迹,这在数字多媒体取证研究中备受关注。为了解决Deepfakes带来的威胁,之前的工作试图通过区分视觉特征来分类真实和虚假的人脸,这受到各种客观条件的影响,如面部的角度或姿势。不同的是,一些研究设计了深度神经网络,在图像的微观语义上区分Deepfakes,取得了很好的效果。然而,这些方法在遇到用不同方法从训练集创建的看不见的Deepfakes时显示出有限的成功。因此,我们提出了一种新的深度伪造检测系统FakeFilter,该系统将不可见深度伪造检测的挑战转化为交叉分布数据分类问题,并采用域自适应策略解决该问题。通过将Deepfakes的不同分布映射到特定空间中的相似特征,检测系统在可见和未见Deepfakes上都实现了相当的性能。进一步的评估和比较结果表明,FakeFilter已经成功地解决了这个挑战。
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FakeFilter: A cross-distribution Deepfake detection system with domain adaptation
Abuse of face swap techniques poses serious threats to the integrity and authenticity of digital visual media. More alarmingly, fake images or videos created by deep learning technologies, also known as Deepfakes, are more realistic, high-quality, and reveal few tampering traces, which attracts great attention in digital multimedia forensics research. To address those threats imposed by Deepfakes, previous work attempted to classify real and fake faces by discriminative visual features, which is subjected to various objective conditions such as the angle or posture of a face. Differently, some research devises deep neural networks to discriminate Deepfakes at the microscopic-level semantics of images, which achieves promising results. Nevertheless, such methods show limited success as encountering unseen Deepfakes created with different methods from the training sets. Therefore, we propose a novel Deepfake detection system, named FakeFilter, in which we formulate the challenge of unseen Deepfake detection into a problem of cross-distribution data classification, and address the issue with a strategy of domain adaptation. By mapping different distributions of Deepfakes into similar features in a certain space, the detection system achieves comparable performance on both seen and unseen Deepfakes. Further evaluation and comparison results indicate that the challenge has been successfully addressed by FakeFilter.
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