: Deep learning methodologies have been used to create applications that can cause threats to privacy, democracy and national security and could be used to further amplify malicious activities. One of those deep learning-powered applications in recent times is synthesized videos of famous personalities. According to Forbes, Generative Adversarial Networks(GANs) generated fake videos growing exponentially every year and the organization known as Deeptrace had estimated an increase of deepfakes by 84% from the year 2018 to 2019. They are used to generate and modify human faces, where most of the existing fake videos are of prurient non-consensual nature, of which its estimates to be around 96% and some carried out impersonating personalities for cyber crime. In this paper, available video datasets are identified and a pretrained model BlazeFace is used to detect faces, and a ResNet and Xception ensembled architectured neural network trained on the dataset to achieve the goal of detection of fake faces in videos. The model is optimized over a loss value and log loss values and evaluated over its F1 score. Over a sample of data, it is observed that focal loss provides better accuracy, F1 score and loss as the gamma of the focal loss becomes a hyper parameter. This provides a k-folded accuracy of around 91% at its peak in a training cycle with the real world accuracy subjected to change over time as the model decays.
翻译:深层学习方法被用于创建能够对隐私、民主和国家安全造成威胁的应用程序,并可用于进一步扩展恶意活动。这些深深层学习动力应用程序之一是对著名人物的视频进行合成。据Forbes称,General Aversarial Networks(GANs)生成的假视频每年成倍增长,称为Deeptrace的组织估计,从2018年到2019年,深层假象增加了84%。这些方法被用于产生和修改人的脸部,而大多数现有假象都是原始的非和谐性质的,其中估计约为96%,有些是网络犯罪冒充性人物的。在本文中,确定了可用的视频数据集,并使用了事先训练过的模型Blazeface(Blazeface)来探测面部,而一个名为ResNet和Xeption的架构神经网则经过培训,以达到在视频中检测假面部模变形的模型目标。模型在损失价值和日志损失值上优化了模型,并在F1分数中进行了评估。在真实时间的样本中,在F1级中,观察到了该模型的精确度,其损失等级的精确度是第91次损失等级,其损失等级的精确度,作为基准的精确度,作为比值,它成为了世界损失等级的比值。