The use of social media websites and applications has become very popular and people share their photos on these networks. Automatic recognition and tagging of people's photos on these networks has raised privacy preservation issues and users seek methods for hiding their identities from these algorithms. Generative adversarial networks (GANs) are shown to be very powerful in generating face images in high diversity and also in editing face images. In this paper, we propose a Generative Mask-guided Face Image Manipulation (GMFIM) model based on GANs to apply imperceptible editing to the input face image to preserve the privacy of the person in the image. Our model consists of three main components: a) the face mask module to cut the face area out of the input image and omit the background, b) the GAN-based optimization module for manipulating the face image and hiding the identity and, c) the merge module for combining the background of the input image and the manipulated de-identified face image. Different criteria are considered in the loss function of the optimization step to produce high-quality images that are as similar as possible to the input image while they cannot be recognized by AFR systems. The results of the experiments on different datasets show that our model can achieve better performance against automated face recognition systems in comparison to the state-of-the-art methods and it catches a higher attack success rate in most experiments from a total of 18. Moreover, the generated images of our proposed model have the highest quality and are more pleasing to human eyes.
翻译:社交媒体网站和应用程序的使用变得非常受欢迎,人们在这些网络上分享他们的照片。在这些网络上对人们照片的自动识别和标记带来了隐私保护问题,用户寻求从这些算法中隐藏其身份的方法。创用对抗性网络(GANs)显示在以高度多样性制作脸部图像和编辑面部图像方面非常强大。在本文中,我们提议以GANs为基础的“General Mask-Guided Face 图像管理”模型(GMFIM)模型,在输入面部图像上应用不易察觉的编辑,以维护图像中个人的隐私。我们的模型由三个主要部分组成:a)将面部图像区域从输入图像中切除并省略背景的方法;b)基于GAN的优化模块在管理面部图像和隐藏面部图像时表现非常有力;c)将输入图像的背景和被操纵的面部图像合并在一起的模块。在优化的模型损失功能中考虑不同的标准,以产生与输入图像的高质量图像尽可能相似的图像。在AFR质量系统中无法更多地识别,同时从AFRest质量系统获得更高的数据测试结果。