Image Synthesis
Image synthesis focuses on generating realistic images from various inputs, such as text descriptions, sketches, or other images, aiming to improve controllability, realism, and efficiency. Current research emphasizes advancements in diffusion models, generative adversarial networks (GANs), and autoregressive models, often incorporating techniques like latent space manipulation, multimodal conditioning (text and image), and attention mechanisms to enhance image quality and control. This field is significant for its applications in diverse areas, including medical imaging, virtual try-ons, and content creation, while also raising important considerations regarding ethical implications and environmental impact of computationally intensive models.
Papers
Domain Generalization for 6D Pose Estimation Through NeRF-based Image Synthesis
Antoine Legrand, Renaud Detry, Christophe De Vleeschouwer
InsertDiffusion: Identity Preserving Visualization of Objects through a Training-Free Diffusion Architecture
Phillip Mueller, Jannik Wiese, Ioan Craciun, Lars Mikelsons
A Survey of Defenses against AI-generated Visual Media: Detection, Disruption, and Authentication
Jingyi Deng, Chenhao Lin, Zhengyu Zhao, Shuai Liu, Qian Wang, Chao Shen