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Detection of GAN-Generated Fake Images over Social Networks

机译:通过社交网络检测GAN生成的伪造图像

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摘要

The diffusion of fake images and videos on social networks is a fast growing problem. Commercial media editing tools allow anyone to remove, add, or clone people and objects, to generate fake images. Many techniques have been proposed to detect such conventional fakes, but new attacks emerge by the day. Image-to-image translation, based on generative adversarial networks (GANs), appears as one of the most dangerous, as it allows one to modify context and semantics of images in a very realistic way. In this paper, we study the performance of several image forgery detectors against image-to-image translation, both in ideal conditions, and in the presence of compression, routinely performed upon uploading on social networks. The study, carried out on a dataset of 36302 images, shows that detection accuracies up to 95% can be achieved by both conventional and deep learning detectors, but only the latter keep providing a high accuracy, up to 89%, on compressed data.
机译:虚假图像和视频在社交网络上的传播是一个快速增长的问题。商业媒体编辑工具允许任何人删除,添加或克隆人和物体,以生成伪造图像。已经提出了许多技术来检测这种常规的伪造品,但是每天都有新的攻击出现。基于生成对抗网络(GAN)的图像到图像翻译似乎是最危险的一种,因为它允许人们以一种非常现实的方式修改图像的上下文和语义。在本文中,我们研究了几种图像伪造检测器在理想条件下以及存在压缩的情况下针对图像到图像翻译的性能,这些性能通常在上传到社交网络后常规执行。这项针对36302张图像的数据集进行的研究表明,常规检测器和深度学习检测器均可以达到95%的检测精度,但只有后者能够提供高达89%的高精度,关于压缩数据。

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