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Realistic Dreams: Cascaded Enhancement of GAN-generated Images with an Example in Face Morphing Attacks

机译:现实的梦想:以面部变形攻击为例,逐步增强GAN生成的图像

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The quality of images produced by generative adversarial networks (GAN) is commonly a trade-off between the model size, its training data needs, and the generation resolution. This trad-off is clear when applying GANs to issues like generating face morphing attacks, where the latent vector used by the generator is manipulated. In this paper, we propose an image enhancement solution designed to increase the quality and resolution of GAN-generated images. The solution is designed to require limited training data and be extendable to higher resolutions. We successfully apply our solution on GAN-based face morphing attacks. Beside the face recognition vulnerability and attack detectability analysis, we prove that the images enhanced by our solution are of higher visual and quantitative quality in comparison to unprocessed attacks and attack images enhanced by state-of-the-art super-resolution approaches.
机译:生成对抗网络(GAN)产生的图像质量通常是模型大小,训练数据需求和生成分辨率之间的权衡。当将GAN应用到生成人脸变形攻击之类的问题上时,这种转移就很明显了,生成器使用的潜矢量在其中受到操纵。在本文中,我们提出了一种图像增强解决方案,旨在提高GAN生成图像的质量和分辨率。该解决方案旨在要求有限的培训数据,并且可以扩展到更高的分辨率。我们成功地将我们的解决方案应用于基于GAN的面部变形攻击。除了面部识别漏洞和攻击可检测性分析之外,我们证明与未处理的攻击和通过最新的超分辨率方法增强的攻击图像相比,我们的解决方案增强的图像具有更高的视觉和定量质量。

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