利用面部对称暴露深度造假

Gen Li, Yun Cao, Xianfeng Zhao
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引用次数: 6

摘要

本文介绍了一种检测合成人像图像和视频的新方法。由于观察到合成面部区域的对称性容易被破坏,该方法旨在通过从对称面部区域学习到的特征来揭示篡改痕迹。为此,设计了一种以硬共享深度残差网络为骨干网络的双流学习框架。特征提取器将这对对称的人脸块映射到一个表示对称特征差异的角距离上。我们进行了大量的实验来测试检测合成人像图像和视频的有效性,相应的结果表明,我们的方法即使在不用于训练检测模型的异构数据和再压缩数据上也是有效的。
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Exploiting Facial Symmetry to Expose Deepfakes
In this paper, we introduce a new approach to detect synthetic portrait images and videos. Motivated by the observation that the symmetry of synthetic facial area would be easily broken, this approach aims to reveal the tampering trace by features learned from symmetrical facial regions. To do so, a two-stream learning framework is designed which uses a hard sharing Deep Residual Networks as the backbone network. The feature extractor maps the pair of symmetrical face patches to an angular distance indicating the difference of symmetry features. Extensive experiments are carried out to test the effectiveness in detecting synthetic portrait images and videos, and corresponding results show that our approach is effective even on heterogeneous data and re-compression data that were not used to train the detection model.
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