论文标题
vec2face:从面部识别中揭示其黑框特征的人脸
Vec2Face: Unveil Human Faces from their Blackbox Features in Face Recognition
论文作者
论文摘要
鉴于他/她从黑盒面部识别引擎中提取的高级表示,揭开对象的面部图像非常具有挑战性。这是因为该引擎中可访问信息的局限性,包括其结构和无法解释的提取功能。本文介绍了一种新颖的生成结构,其中包含了培养的培训框架(dibigan)中的两种族生成的生成性,即在蒸馏框架中使用肉类生成的对抗网络,以鉴于该人的特征,可以合成身份的面孔。为了有效解决此问题,这项工作首先引入了一个二主公制,以便可以在图像域中直接采用距离测量和度量学习过程,以进行图像重建任务。其次,引入了一个蒸馏过程,以最大程度地利用Blackbox面部识别引擎中利用的信息。然后,为更强大的发电机提供了具有指数加权策略的功能条件发电机结构,该结构可以通过ID保存综合现实面孔。在包括Celeba,LFW,AgeDB,CFP-FP在内的几个基准测试数据集的结果表明,Dibigan对图像现实主义和ID保存属性的有效性。
Unveiling face images of a subject given his/her high-level representations extracted from a blackbox Face Recognition engine is extremely challenging. It is because the limitations of accessible information from that engine including its structure and uninterpretable extracted features. This paper presents a novel generative structure with Bijective Metric Learning, namely Bijective Generative Adversarial Networks in a Distillation framework (DiBiGAN), for synthesizing faces of an identity given that person's features. In order to effectively address this problem, this work firstly introduces a bijective metric so that the distance measurement and metric learning process can be directly adopted in image domain for an image reconstruction task. Secondly, a distillation process is introduced to maximize the information exploited from the blackbox face recognition engine. Then a Feature-Conditional Generator Structure with Exponential Weighting Strategy is presented for a more robust generator that can synthesize realistic faces with ID preservation. Results on several benchmarking datasets including CelebA, LFW, AgeDB, CFP-FP against matching engines have demonstrated the effectiveness of DiBiGAN on both image realism and ID preservation properties.