With the identity information in face data more closely related to personal credit and property security, people pay increasing attention to the protection of face data privacy. In different tasks, people have various requirements for face de-identification (De-ID), so we propose a systematical solution compatible for these De-ID operations. Firstly, an attribute disentanglement and generative network is constructed to encode two parts of the face, which are the identity (facial features like mouth, nose and eyes) and expression (including expression, pose and illumination). Through face swapping, we can remove the original ID completely. Secondly, we add an adversarial vector mapping network to perturb the latent code of the face image, different from previous traditional adversarial methods. Through this, we can construct unrestricted adversarial image to decrease ID similarity recognized by model. Our method can flexibly de-identify the face data in various ways and the processed images have high image quality.
翻译:与个人信用和财产安全更密切相关的面部身份信息,人们日益关注面部数据隐私的保护。在不同的任务中,人们对面部身份识别(De-ID)有各种要求,因此我们建议一种与这些 De-ID 操作相兼容的系统化解决方案。首先,建立属性分解和基因网络,将面部的两部分编码,即身份(口、鼻、眼等面部特征)和表达(包括表情、姿势和照明)和表达(包括表情、姿势和光化)。通过面部互换,我们可以完全删除原始身份。第二,我们增加一个对抗性矢量绘图网络,以渗透面部图像的潜在代码,不同于以往传统的对抗性方法。通过这个网络,我们可以构建不受限制的对立面图像,以减少模型所识别的相似性。我们的方法可以以各种方式灵活地去识别面部数据,经过处理的图像具有很高的图像质量。