Detecting facial forgery images and videos is an increasingly important topic in multimedia forensics. As forgery images and videos are usually compressed to different formats such as JPEG and H264 when circulating on the Internet, existing forgery-detection methods trained on uncompressed data often have significantly decreased performance in identifying them. To solve this problem, we propose a novel anti-compression facial forgery detection framework, which learns a compression-insensitive embedding feature space utilizing both original and compressed forgeries. Specifically, our approach consists of two novel ideas: (i) extracting compression-insensitive features from both uncompressed and compressed forgeries using an adversarial learning strategy; (ii) learning a robust partition by constructing a metric loss that can reduce the distance of the paired original and compressed images in the embedding space. Experimental results demonstrate that, the proposed method is highly effective in handling both compressed and uncompressed facial forgery images.
翻译:检测面部伪造图像和视频是多媒体法证中日益重要的主题。 由于伪造图像和视频通常被压缩成不同格式,如在互联网上传播的JPEG和H264, 现有的关于未压缩数据培训的伪造检测方法往往显著降低了识别能力。 为了解决这个问题,我们建议建立一个新型的抗压缩面部伪造图像检测框架, 利用原始和压缩的伪造材料学习压缩不敏感嵌入功能空间。 具体而言, 我们的方法包括两个新颖想法:(一) 使用对抗性学习战略从未压缩和压缩的伪造材料中提取不敏感压缩功能;(二) 通过构建一个能够缩短嵌入空间内原始和压缩图像距离的量化损失模型,学习稳健的分隔。实验结果表明,拟议方法对于处理压缩和未压缩的面部伪造图像非常有效。