Discrimination of Facial Image Generated via GAN (Work-in-Progress)

Hyo-Kyung Choi, Eun-Jung Choi
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Abstract

Generated fake facial images remain a serious problem for corporations, governments, developers and individuals, as the voice of anxiety about the side effects of artificial intelligence grows. However, today the AI is still done mainly as a way to keep up with a real facial image rather than researching how to discriminate the generated image. As the world that is no longer able to distinguish between real and fake facial images is coming, the need for radical AI technology to detect generated images arises. In this paper, we introduce an approach that addresses these issues, describing in feasible detail the discriminative models based on various machine learning algorithms. Specifically, we show that the model with the highest accuracy in supervised learning achieved a 92.5% detection rate at 7.5% false positive rate (FPR), out of 400 images. And we have also achieved positive results in unsupervised learning. Our results demonstrate that the fake facial images generated by the GAN can be discriminated by the machine learning algorithms. Since GAN models tend to improve rapidly, we foresee new neural network discrimination models gaining in importance as part of a generated image detection strategy in coming years.
基于GAN的人脸图像识别(在研)
对于企业、政府、开发者和个人来说,生成的虚假面部图像仍然是一个严重的问题,因为对人工智能副作用的担忧之声越来越大。然而,今天的人工智能仍然主要是作为一种跟上真实面部图像的方式,而不是研究如何区分生成的图像。随着无法区分真实和虚假面部图像的世界即将到来,需要突破性的人工智能技术来检测生成的图像。在本文中,我们介绍了一种解决这些问题的方法,详细描述了基于各种机器学习算法的判别模型。具体来说,我们表明,在监督学习中具有最高准确度的模型在400张图像中实现了92.5%的检测率和7.5%的假阳性率(FPR)。我们在无监督学习方面也取得了积极的成果。我们的结果表明,由GAN生成的假人脸图像可以被机器学习算法识别。由于GAN模型倾向于快速改进,我们预计新的神经网络识别模型将在未来几年成为生成图像检测策略的重要组成部分。
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