PRO-Face:一个保护隐私的人脸图像可识别混淆的通用框架

Lin Yuan, Linguo Liu, Xiao Pu, Zhao Li, Hongbo Li, Xinbo Gao
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引用次数: 6

摘要

许多应用(例如,视频监控和身份验证)依赖于自动面部识别来保证安全服务的功能,同时,必须考虑到暴露在摄像机系统下的个人隐私。这就是所谓的隐私-效用权衡。然而,现有的面部隐私保护方法大多侧重于从图像中去除可识别的视觉信息,使被保护的面部无法被机器识别,从而牺牲了实用性。为了解决隐私实用性的挑战,我们提出了一种新颖、通用、有效且轻量级的框架,用于保护隐私的人脸图像可识别混淆(称为PRO-Face)。该框架允许人们首先使用任何首选的混淆处理人脸图像,例如图像模糊、像素化和人脸变形。然后,它利用Siamese网络将原始图像与其混淆形式融合在一起,生成最终的受保护图像,在视觉上与人类感知的混淆图像相似(为了隐私),但仍然被机器识别为原始身份(为了实用)。该框架支持面部匿名化的各种混淆。基于预训练的识别器不仅可以准确地识别匿名图像,而且可以在普通图像和匿名图像之间进行准确的识别。这些特点是拟议框架的“一般”优点。深入的客观和主观评价证明了该框架在不同场景下的隐私保护和效用保护的有效性。我们的源代码、模型和任何补充材料都是公开的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PRO-Face: A Generic Framework for Privacy-preserving Recognizable Obfuscation of Face Images
A number of applications (e.g., video surveillance and authentication) rely on automated face recognition to guarantee functioning of secure services, and meanwhile, have to take into account the privacy of individuals exposed under camera systems. This is the so-called Privacy-Utility trade-off. However, most existing approaches to facial privacy protection focus on removing identifiable visual information from images, leaving protected face unrecognizable to machine, which sacrifice utility for privacy. To tackle the privacy-utility challenge, we propose a novel, generic, effective, yet lightweight framework for Privacy-preserving Recognizable Obfuscation of Face images (named as PRO-Face). The framework allows one to first process a face image using any preferred obfuscation, such as image blur, pixelate and face morphing. It then leverages a Siamese network to fuse the original image with its obfuscated form, generating the final protected image visually similar to the obfuscated one from human perception (for privacy) but still recognized as the original identity by machine (for utility). The framework supports various obfuscations for facial anonymization. The face recognition can be performed accurately not only across anonymized images but also between plain and anonymized ones, based on only pre-trained recognizers. Those feature the "generic" merit of the proposed framework. In-depth objective and subjective evaluations demonstrate the effectiveness of the proposed framework in both privacy protection and utility preservation under distinct scenarios. Our source code, models and any supplementary materials are made publicly available.
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