Deepfake poses a serious threat to the reliability of judicial evidence and intellectual property protection. In spite of an urgent need for Deepfake identification, existing pixel-level detection methods are increasingly unable to resist the growing realism of fake videos and lack generalization. In this paper, we propose a scheme to expose Deepfake through faint signals hidden in face videos. This scheme extracts two types of minute information hidden between face pixels-photoplethysmography (PPG) features and auto-regressive (AR) features, which are used as the basis for forensics in the temporal and spatial domains, respectively. According to the principle of PPG, tracking the absorption of light by blood cells allows remote estimation of the temporal domains heart rate (HR) of face video, and irregular HR fluctuations can be seen as traces of tampering. On the other hand, AR coefficients are able to reflect the inter-pixel correlation, and can also reflect the traces of smoothing caused by up-sampling in the process of generating fake faces. Furthermore, the scheme combines asymmetric convolution block (ACBlock)-based improved densely connected networks (DenseNets) to achieve face video authenticity forensics. Its asymmetric convolutional structure enhances the robustness of network to the input feature image upside-down and left-right flipping, so that the sequence of feature stitching does not affect detection results. Simulation results show that our proposed scheme provides more accurate authenticity detection results on multiple deep forgery datasets and has better generalization compared to the benchmark strategy.
翻译:深藏对司法证据和知识产权保护的可靠性构成了严重的威胁。尽管迫切需要查明深度假证和知识产权保护的可靠性,但现有的像素级检测方法越来越无法抵御假视频不断增长的现实现实主义和缺乏概括化。在本文件中,我们提出一个计划,通过面对面视频中隐藏的暗暗信号暴露Deepfake。这个计划提取了脸部像素-磷酸胶相色学(PPG)特征和自动递增(AR)特征之间隐藏的两种分钟信息,这些特征分别用作时间和空间域内法医的基础。根据PPG的原则,跟踪血液细胞吸收光能远程估计表相视频的时域心率率(HR)和不规则性人力资源波动可被视为篡改的痕迹。另一方面,AR系数能够反映像素之间的相关性,也可以反映在生成假面部时的上标本(ACTlock)的不对称混凝块(ACBlock)的测光线使得基于面部比相光细胞的测光谱性网络(DNSNet)的精度提高了其直观性结构,从而显示其直观性变现性变现性图像网络(DFIFIFIFILB)的结果。