基于深度残差学习的切出正则化深度假货识别方法

Sai Dheeraj Gummadi, Anirban Ghosh
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引用次数: 0

摘要

生成对抗网络(Generative Adversarial Networks, GANs)的发展极大地简化了与真实图像难以区分的深度假图像的生成。作为这种进步的一个缺点,现在很容易冒充一个人,导致身份盗窃和其他恶意后果。在这种情况下,必须有一个强大的算法来区分真实图像和虚假图像。在这项研究中,我们提出了一种基于残差连接的卷积神经网络(CNN)架构来检测深度伪造图像,并将结果与现有的用于识别深度伪造图像的迁移学习算法进行了比较。本研究使用的数据集是Flickr-Faces-HQ (FFHQ)数据集(Nvidia)和由Nvidia提出的Style GAN生成的deepfakes的结合。由12万张图像组成的数据集用于训练和验证网络,而另一组2万张真实世界的图像用于测试模型的性能。在目前的工作中,我们测试了三种不同算法的鲁棒性——Inception Resnet V2, VGGFace2,以及我们定制的残差CNN,在识别真实图像时使用和不使用截断正则化。基于残差体系结构的实现结合cut-out体系结构产生的误报率最低,为0.0043%,而Inception Resnet V2结合cut- regularization产生的最佳准确率为99.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Residual Learning based Discriminator for Identifying Deepfakes with Cut-Out Regularization
The recent development of Generative Adversarial Networks (GANs) have greatly eased the generation of deepfake images which are indistinguishable from real images. As a downside of such advancement, it is now easy to impersonate a person leading to identity theft and other malicious outcomes. In such a scenario it becomes imperative to have a robust algorithm in place which can segregate real images from the fake ones. In this study, we suggest a residual connection based convolutional neural network (CNN) architecture for detecting deepfake images and compare the results with the existing transfer learning algorithms for identifying the deepfakes. The data set used in this study is the combination of the Flickr-Faces-HQ (FFHQ) data set (Nvidia) and the deepfakes generated by the Style GAN, which is proposed by Nvidia. The data set consisting of 1,20,000 images is used for training and validating the network, while a separate set of 20,000 real world images are used for testing the performance of the model. In this current work, we test the robustness of three different algorithms - Inception Resnet V2, VGGFace2, and our customized Residual CNN with and without cut-out regularization in identifying real images. The residual architecture-based implementation in combination with cut-out architecture produces the lowest false positives rate at 0.0043% while the Inception Resnet V2 in combination with cut - regularization produces the best accuracy at 99.05%.
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