Identity Preservability and Detectability of IDInvert GAN Model

Pattanadej Chaengsrisuk, Napa Sae-Bae
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Abstract

GAN inversion is a type of generative adversarial networks (GAN) models that can regenerate realistic images from real face photos and further perform image manipulation. While GAN inversion models can be useful for many purposes, it can be abused to generate harmfully fake contents also. This paper evaluates the performance of the recent In-domain GAN inversion model (IDInvert) regarding identity preservability and detectability of its generated face images. The experiments are conducted to answer the two main questions; how well IDInvert can imitate real face photos and how well existing image classification techniques can distinguish its generated images from the real ones. The results show that generated images do not preserve personal identity and thus significantly loss similarity to their reference photos. In addition, common machine learning classifiers can modestly distinguish these generated images from real photos with 0.87 accuracy. This indicates that the recent IDInvert model’s ability to imitate real faces is not yet perfect and hazardous, and its generated images are still simply detected.
IDInvert GAN模型的身份保存性和可检测性
GAN反演是一种生成对抗网络(GAN)模型,它可以从真实的人脸照片中生成逼真的图像,并进一步进行图像处理。虽然GAN反演模型可以用于许多目的,但它也可以被滥用来生成有害的虚假内容。本文评估了最近的域内GAN反演模型(IDInvert)在其生成的人脸图像的身份保存性和可检测性方面的性能。进行实验是为了回答两个主要问题;IDInvert模拟真实人脸照片的效果如何,以及现有的图像分类技术如何区分其生成的图像与真实图像。结果表明,生成的图像不保留个人身份,从而显着失去了与参考照片的相似性。此外,普通机器学习分类器可以适度地将这些生成的图像与真实照片区分开来,准确率为0.87。这表明,最近的IDInvert模型模拟真实人脸的能力还不够完美和危险,其生成的图像仍然是简单的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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