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Are GAN Generated Images Easy to Detect? A Critical Analysis of the State-Of-The-Art

机译:GaN生成的图像易于检测吗? 对最先进的批判性分析

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The advent of deep learning has brought a significant improvement in the quality of generated media. However, with the increased level of photorealism, synthetic media are becoming hardly distinguishable from real ones, raising serious concerns about the spread of fake or manipulated information over the Internet. In this context, it is important to develop automated tools to reliably and timely detect synthetic media. In this work, we analyze the state-of-the-art methods for the detection of synthetic images, highlighting the key ingredients of the most successful approaches, and comparing their performance over existing generative architectures. We will devote special attention to realistic and challenging scenarios, like media uploaded on social networks or generated by new and unseen architectures, analyzing the impact of suitable augmentation and training strategies on the detectors’ generalization ability.
机译:深度学习的出现带来了生成媒体的质量的重大改善。 然而,随着光敏水平的增加,合成介质与真实的培养基几乎没有区别,提高对互联网的假冒或操纵信息的传播。 在这种情况下,重要的是开发自动化工具可靠和及时地检测合成介质。 在这项工作中,我们分析了检测合成图像的最先进的方法,突出了最成功的方法的关键成分,并比较了它们对现有生成架构的性能。 我们将特别注意逼真和具有挑战性的情景,如媒体上传社交网络或新的和看不见的架构产生,分析了适当的增强和培训策略对探测器的泛化能力的影响。

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