There is growing concern about image privacy due to the popularity of social media and photo devices, along with increasing use of face recognition systems. However, established image de-identification techniques are either too subject to re-identification, produce photos that are insufficiently realistic, or both. To tackle this, we present a novel approach for image obfuscation by manipulating latent spaces of an unconditionally trained generative model that is able to synthesize photo-realistic facial images of high resolution. This manipulation is done in a way that satisfies the formal privacy standard of local differential privacy. To our knowledge, this is the first approach to image privacy that satisfies $\varepsilon$-differential privacy \emph{for the person.}
翻译:由于社交媒体和照片设备的普及,人们日益关注图像隐私,同时越来越多地使用面部识别系统,然而,既有的图像去身份识别技术要么太过容易重新识别,要么产生不切实际的照片,要么两者兼而有之。为了解决这一问题,我们提出了一个新颖的图像混淆方法,即操纵一个无条件的、经过训练的、能够合成高分辨率光真面部图像的基因化模型的潜在空间。这种操纵的方式符合地方差异隐私的正式隐私标准。 据我们所知,这是满足个人不同隐私的图像隐私的第一个方法。}