基于双流卷积神经网络学习两级特征的深度假视频检测

Zheng Zhao, Penghui Wang, W. Lu
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引用次数: 8

摘要

深度造假技术使得视频中的换脸变得容易使用。如今,Deepfake视频在网络上的传播受到了全世界的关注。这项工作提出了一种更准确和鲁棒的检测方法。由于Deepfake工具留下的工件在很大程度上可以分为语义级和噪声级两类不同级别,因此我们采用两流卷积神经网络(CNN)同时捕获两级特征。异常网络仅作为第一流进行训练,以检测语义异常,如面部轮廓周围的编辑伪影、细节缺失和眼睛几何不一致。同时,第二流包含约束卷积滤波器和中值滤波器,用于捕获局部噪声中的篡改痕迹。通过连接从两个流中学习到的2级特征,我们的方法获得了关于人脸交换存在性的非常全面的知识。实验结果表明,该方法在精度和鲁棒性方面都优于现有方法。
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Detecting Deepfake Video by Learning Two-Level Features with Two-Stream Convolutional Neural Network
Deepfake techniques has made face swapping in video easy to use. Nowadays, the spread of Deepfake videos over networks is concerned worldwide. This work proposes an approach to more accurate and robust detection of them. Since artifacts left by Deepfake tools can be largely categorized into two classes of different levels, i.e. semantic and noise level, we adopt a two-stream convolutional neural network (CNN) to capture the 2-level features concurrently. Xception network is trained only as the first stream to detect semantic anomalies such as the editing artifacts around face contour, detail missing, and geometric inconsistence in eyes. Meanwhile, the 2nd stream, which contain the constrained convolution filter and median filter, is designed to capture the tampering traces in local noises. By concatenating the 2-level features learned from the both streams, our method obtains very comprehensive knowledge about the existence of face swapping. The experimental results have shown its advantage over the existing methods on both the accuracy and robustness.
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