好文档 - 专业文书写作范文服务资料分享网站

Privacy-Protective-GAN for Privacy Preserving Face De-Identification

天下 分享 时间: 加入收藏 我要投稿 点赞

Privacy-Protective-GAN for Privacy Preserving Face

De-Identification

Yifan Wu;Fan Yang;Yong Xu;Haibin Ling

【期刊名称】《计算机科学技术学报(英文版)》 【年(卷),期】2019(034)001

【摘要】Face de-identification has become increasingly important as the image sources are explosively growing and easily accessible. The advance of new face recognition techniques also arises people's concern regarding the privacy leakage. The mainstream pipelines of face de-identification are mostly based on the k-same framework, which bears critiques of low effectiveness and poor visual quality. In this paper, we propose a new framework called Privacy-Protective-GAN (PP-GAN) that adapts GAN (generative adversarial network) with novel verificator and regulator modules specially designed for the face de-identification problem to ensure generating de-identified output with retained structure similarity according to a single input. We evaluate the proposed approach in terms of privacy protection, utility preservation, and structure similarity. Our approach not only outperforms existing face de-identification techniques but also provides a practical framework of adapting GAN with priors of domain knowledge. 【总页数】14页(47-60) 【关键词】

Privacy-Protective-GAN for Privacy Preserving Face De-Identification

Privacy-Protective-GANforPrivacyPreservingFaceDe-IdentificationYifanWu;FanYang;YongXu;HaibinLing【期刊名称】《计算机科学技术学报(英文版)》【年(卷),期】2019(034)001【摘要】Facede
推荐度:
点击下载文档文档为doc格式
9v7dy8k4g103ypi6bk157e16g2f4sy00oqm
领取福利

微信扫码领取福利

微信扫码分享