CtlGAN introduces a novel contrastive transfer learning strategy to generate high-quality artistic portraits from real face photos under 10-shot or 1-shot settings. The model adapts a pretrained StyleGAN in the source domain to different artistic domains with no more than 10 training examples. By enforcing the generations of different latent codes to be distinguishable, CtlGAN significantly outperforms state-of-the-art methods in generating artistic portraits. The proposed encoder embeds real faces into Z+ latent space and utilizes a dual-path training strategy to better cope with the adapted decoder and eliminate artifacts.
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by Yue Wang,Ran... pada arxiv.org 03-11-2024
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