StyleGAN Latent
StyleGAN latent space manipulation focuses on controlling and editing images generated by StyleGAN, a powerful generative adversarial network, to achieve specific visual effects or enhance existing images. Current research emphasizes improving the fidelity and diversity of generated images, often employing techniques like latent space optimization, attention mechanisms, and autoregressive methods within StyleGAN's architecture or by integrating it with other models like diffusion networks. This research is significant because it enables high-quality image synthesis and editing for diverse applications, including data augmentation for medical image analysis, realistic talking head generation, and advanced image manipulation tools for creative and forensic purposes.
Papers
StyleSwap: Style-Based Generator Empowers Robust Face Swapping
Zhiliang Xu, Hang Zhou, Zhibin Hong, Ziwei Liu, Jiaming Liu, Zhizhi Guo, Junyu Han, Jingtuo Liu, Errui Ding, Jingdong Wang
StyleMask: Disentangling the Style Space of StyleGAN2 for Neural Face Reenactment
Stella Bounareli, Christos Tzelepis, Vasileios Argyriou, Ioannis Patras, Georgios Tzimiropoulos
Generative Multiplane Images: Making a 2D GAN 3D-Aware
Xiaoming Zhao, Fangchang Ma, David Güera, Zhile Ren, Alexander G. Schwing, Alex Colburn
Injecting 3D Perception of Controllable NeRF-GAN into StyleGAN for Editable Portrait Image Synthesis
Jeong-gi Kwak, Yuanming Li, Dongsik Yoon, Donghyeon Kim, David Han, Hanseok Ko