ActGAN: Flexible and Efficient One-shot Face Reenactment
Abstract
This paper introduces ActGAN - a novel end-to-end generative adversarial network (GAN) for one-shot face reenactment. Given two images, the goal is to transfer the facial expression of the source actor onto a target person in a photo-realistic fashion. While existing methods require target identity to be predefined, we address this problem by introducing a "many-to-many" approach, which allows arbitrary persons both for source and target without additional retraining. To this end, we employ the Feature Pyramid Network (FPN) as a core generator building block - the first application of FPN in face reenactment, producing finer results. We also introduce a solution to preserve a person's identity between synthesized and target person by adopting the state-of-the-art approach in deep face recognition domain. The architecture readily supports reenactment in different scenarios: "many-to-many", "one-to-one", "one-to-another" in terms of expression accuracy, identity preservation, and overall image quality. We demonstrate that ActGAN achieves competitive performance against recent works concerning visual quality.
Cite
@article{arxiv.2003.13840,
title = {ActGAN: Flexible and Efficient One-shot Face Reenactment},
author = {Ivan Kosarevych and Marian Petruk and Markian Kostiv and Orest Kupyn and Mykola Maksymenko and Volodymyr Budzan},
journal= {arXiv preprint arXiv:2003.13840},
year = {2020}
}
Comments
accepted by IWBF2020