Latent to Latent: A Learned Mapper for Identity Preserving Editing of Multiple Face Attributes in StyleGAN-generated Images

Siavash Khodadadeh, S. Ghadar, Saeid Motiian, Wei-An Lin, Ladislau Bölöni, R. Kalarot
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引用次数: 13

Abstract

Several recent papers introduced techniques to adjust the attributes of human faces generated by unconditional GANs such as StyleGAN. Despite efforts to disentangle the attributes, a request to change one attribute often triggers unwanted changes to other attributes as well. More importantly, in some cases, a human observer would not recognize the edited face to belong to the same person. We propose an approach where a neural network takes as input the latent encoding of a face and the desired attribute changes and outputs the latent space encoding of the edited image. The network is trained offline using unsupervised data, with training labels generated by an off-the-shelf attribute classifier. The desired attribute changes and conservation laws, such as identity maintenance, are encoded in the training loss. The number of attributes the mapper can simultaneously modify is only limited by the attributes available to the classifier – we trained a network that handles 35 attributes, more than any previous approach. As no optimization is performed at deployment time, the computation time is negligible, allowing real-time attribute editing. Qualitative and quantitative comparisons with the current state-of-the-art show our method is better at conserving the identity of the face and restricting changes to the requested attributes.
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隐到隐:stylegan生成图像中多人脸属性身份保持编辑的学习映射器
最近的几篇论文介绍了调整无条件gan(如StyleGAN)生成的人脸属性的技术。尽管努力将属性分开,但更改一个属性的请求通常也会触发对其他属性的不必要更改。更重要的是,在某些情况下,人类观察者不会认出编辑过的脸属于同一个人。我们提出了一种方法,神经网络以人脸的潜在编码和期望的属性变化作为输入,输出编辑后图像的潜在空间编码。该网络使用无监督数据进行离线训练,训练标签由现成的属性分类器生成。期望的属性变化和守恒定律,如恒等维护,被编码在训练损失中。映射器可以同时修改的属性数量仅受分类器可用属性的限制——我们训练了一个处理35个属性的网络,比以前的任何方法都多。由于在部署时没有执行任何优化,因此计算时间可以忽略不计,从而允许进行实时属性编辑。与当前最先进的定性和定量比较表明,我们的方法更好地保存了人脸的身份并限制了对所请求属性的更改。
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