论文标题
具有里程碑意义的执法和风格操纵,以进行生成变形
Landmark Enforcement and Style Manipulation for Generative Morphing
论文作者
论文摘要
变形图像通过将其作为多个个体呈现,威胁着面部识别系统(FRS),使对手可以与另一个主题交换身份。使用生成对抗网络(GAN)的形态产生会导致高质量的形态不受基于里程碑的方法引起的空间伪像的影响,但是与基于标准的GAN基于GAN的形态方法的身份显然丧失。在本文中,我们通过引入具有里程碑意义的执法方法来解决此问题,提出了一种新型的StyleGan变形技术。考虑到这种方法,我们旨在执行变形图像的地标,以代表真正的面孔的地标的空间平均值,然后代表变形图像,以继承两种善意面的几何认同。使用主成分分析(PCA)对我们模型的潜在空间进行探索,以强调两种善意面对变形潜在表示的影响,并通过平均潜在领域来解决身份损失问题。此外,为了改善形态中的高频重建,我们研究了stylegan2模型的噪声输入的火车能力。
Morph images threaten Facial Recognition Systems (FRS) by presenting as multiple individuals, allowing an adversary to swap identities with another subject. Morph generation using generative adversarial networks (GANs) results in high-quality morphs unaffected by the spatial artifacts caused by landmark-based methods, but there is an apparent loss in identity with standard GAN-based morphing methods. In this paper, we propose a novel StyleGAN morph generation technique by introducing a landmark enforcement method to resolve this issue. Considering this method, we aim to enforce the landmarks of the morph image to represent the spatial average of the landmarks of the bona fide faces and subsequently the morph images to inherit the geometric identity of both bona fide faces. Exploration of the latent space of our model is conducted using Principal Component Analysis (PCA) to accentuate the effect of both the bona fide faces on the morphed latent representation and address the identity loss issue with latent domain averaging. Additionally, to improve high frequency reconstruction in the morphs, we study the train-ability of the noise input for the StyleGAN2 model.