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Detecting Face2Face Facial Reenactment in Videos

机译:在视频中检测Face2Face面部重现

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Visual content has become the primary source of information, as evident in the billions of images and videos, shared and uploaded on the Internet every single day. This has led to an increase in alterations in images and videos to make them more informative and eye-catching for the viewers worldwide. Some of these alterations are simple, like copy-move, and are easily detectable, while other sophisticated alterations like reenactment based DeepFakes are hard to detect. Reenactment alterations allow the source to change the target expressions and create photo-realistic images and videos. While the technology can be potentially used for several applications, the malicious usage of automatic reenactment has a very large social implication. It is therefore important to develop detection techniques to distinguish real images and videos with the altered ones. This research proposes a learning-based algorithm for detecting reenactment based alterations. The proposed algorithm uses a multi-stream network that learns regional artifacts and provides a robust performance at various compression levels. We also propose a loss function for the balanced learning of the streams for the proposed network. The performance is evaluated on the publicly available FaceForen- sics dataset. The results show state-of-the-art classification accuracy of 99.96%, 99.10%, and 91.20% for no, easy, and hard compression factors, respectively.
机译:视觉内容已经成为信息的主要来源,每天在互联网上共享和上传的数十亿图像和视频中就可以明显看出这一点。这导致图像和视频更改的增加,使它们对于全世界的观看者来说都更具信息性和醒目性。其中一些更改很简单,例如复制移动,并且易于检测,而其他复杂的更改(例如基于重演的DeepFakes)则很难检测到。重演更改允许源更改目标表达并创建逼真的图像和视频。虽然该技术可以潜在地用于多种应用程序,但是自动重演的恶意使用具有很大的社会意义。因此,开发检测技术以区分真实的图像和视频与已更改的图像和视频非常重要。这项研究提出了一种基于学习的算法,用于检测基于重演的变更。所提出的算法使用多流网络,该网络学习区域伪像并在各种压缩级别上提供可靠的性能。我们还提出了一个损失函数,用于针对所提议网络的流进行均衡学习。在公开可用的FaceForensics数据集上评估性能。结果显示,对于无,简单和硬压缩因子,最新分类精度分别为99.96%,99.10%和91.20%。

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