Author:
Yang Shuai,Qiao Kai,Qin Ruoxi,Xie Pengfei,Shi Shuhao,Liang Ningning,Wang Linyuan,Chen Jian,Hu Guoen,Yan Bin
Abstract
With the continuous development of deep-learning technology, ever more advanced face-swapping methods are being proposed. Recently, face-swapping methods based on generative adversarial networks (GANs) have realized many-to-many face exchanges with few samples, which advances the development of this field. However, the images generated by previous GAN-based methods often show instability. The fundamental reason is that the GAN in these frameworks is difficult to converge to the distribution of face space in training completely. To solve this problem, we propose a novel face-swapping method based on pretrained StyleGAN generator with a stronger ability of high-quality face image generation. The critical issue is how to control StyleGAN to generate swapped images accurately. We design the control strategy of the generator based on the idea of encoding and decoding and propose an encoder called ShapeEditor to complete this task. ShapeEditor is a two-step encoder used to generate a set of coding vectors that integrate the identity and attribute of the input faces. In the first step, we extract the identity vector of the source image and the attribute vector of the target image; in the second step, we map the concatenation of the identity vector and attribute vector onto the potential internal space of StyleGAN. Extensive experiments on the test dataset show that the results of the proposed method are not only superior in clarity and authenticity than other state-of-the-art methods but also sufficiently integrate identity and attribute.
Subject
Artificial Intelligence,Biomedical Engineering
Reference37 articles.
1. Image2stylegan: how to embed images into the stylegan latent space?,;Abdal,2019
2. Identity preserving multi-pose facial expression recognition using fine tuned vgg on the latent space vector of generative adversarial network;Abirami;Math. Biosci. Eng.,2021
3. Towards open-set identity preserving face synthesis,;Bao,2018
4. Face swapping: automatically replacing faces in photographs;Bitouk;ACM Trans. Graph.,2008
5. Arcface: additive angular margin loss for deep face recognition,;Deng,2019
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献