מושגי ליבה
The author proposes CtlGAN, a new model for few-shot artistic portraits generation, utilizing contrastive transfer learning and a novel encoder approach to achieve high-quality results.
תקציר
CtlGAN introduces a novel approach to generating artistic portraits with limited training data. The model outperforms existing methods in terms of quality and identity preservation under 10-shot and 1-shot settings. Extensive comparisons and user studies validate the effectiveness of CtlGAN.
Key Points:
- CtlGAN addresses the challenge of generating artistic portraits with limited data.
- The model leverages contrastive transfer learning and a unique encoder design.
- Results show significant improvements in quality and identity preservation compared to state-of-the-art methods.
- User study results indicate that CtlGAN is preferred for its generation quality, style consistency, and identity preservation.
The paper also includes an in-depth analysis of key components such as the encoder, decoder, and the impact of cross-domain triplet loss. Ablation studies demonstrate the importance of each component in achieving superior results.
סטטיסטיקה
"Our method significantly outperforms state-of-the-arts under 10-shot and 1-shot settings."
"Extensive qualitative, quantitative comparisons show high-quality artistic portraits generated."
"User study results indicate preference for our method over other approaches."