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FDFtNet: Facing Off Fake Images Using Fake Detection Fine-Tuning Network

机译:FDFTNET:使用假检测微调网络面向假图像

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Creating fake images and videos such as "Deepfake" has become much easier these days due to the advancement in Generative Adversarial Networks (GANs). Moreover, recent research such as the few-shot learning can create highly realistic personalized fake images with only a few images. Therefore, the threat of Deepfake to be used for a variety of malicious intents such as propagating fake images and videos becomes prevalent. And detecting these machine-generated fake images has been more challenging than ever. In this work, we propose a light-weight robust fine-tuning neural network-based classifier architecture called Fake Detection Fine-tuning Network (FDFtNet), which is capable of detecting many of the new fake face image generation models, and can be easily combined with existing image classification networks and fine-tuned on a few datasets. In contrast to many existing methods, our approach aims to reuse popular pre-trained models with only a few images for fine-tuning to effectively detect fake images. The core of our approach is to introduce an image-based self-attention module called Fine-Tune Transformer that uses only the attention module and the down-sampling layer. This module is added to the pre-trained model and fine-tuned on a few data to search for new sets of feature space to detect fake images. We experiment with our FDFtNet on the GANs-based dataset (Progressive Growing GAN) and Deepfake-based dataset (Deepfake and Face2Face) with a small input image resolution of 64×64 that complicates detection. Our FDFtNet achieves an overall accuracy of 90.29% in detecting fake images generated from the GANs-based dataset, outperforming the state-of-the-art.
机译:由于生成的对抗网络(GANS)的进步,这些天,创造假图像和视频如“DeepFake”已经变得更加容易。此外,近期学习的最近的研究可以创造高度现实的个性化假图像,只有几种图像。因此,DeepFake用于各种恶意意图的威胁,例如传播假图像和视频变得普遍。并检测这些机器生成的假图像比以往任何时候都更具挑战性。在这项工作中,我们提出了一种良好的强大的微调神经网络的基于神经网络的分类器架构,称为假检测微调网络(FDFTNET),其能够检测到许多新的虚假面部图像生成模型,并且可以很容易地结合现有的图像分类网络并进行微调在几个数据集上。与许多现有方法相比,我们的方法旨在重用流行的预先训练模型,只有几种图像进行微调,以有效地检测假图像。我们的方法的核心是引入一个基于图像的自我关注模块,称为微调变压器,仅使用注意模块和下采样层。该模块被添加到预先训练的模型中,并在几个数据上进行微调,以搜索新的特征空间,以检测假图像。我们在基于GANS的数据集(逐行生长GAN)和基于DeepFake的数据集(DeepFake和Face2face)上进行FDFTNET进行实验,其小输入图像分辨率为64×64,使检测变得复杂。我们的FDFTNET在检测到从基于GAN的数据集生成的假图像中实现了90.29%的整体准确性,优于最先进的。

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