Latent Diffusion Model
Latent diffusion models (LDMs) are generative AI models that create high-quality images by reversing a diffusion process in a compressed latent space, offering efficiency advantages over pixel-space methods. Current research focuses on improving controllability (e.g., through text or other modalities), enhancing efficiency (e.g., via parameter-efficient architectures or faster inference), and addressing challenges like model robustness and ethical concerns (e.g., watermarking and mitigating adversarial attacks). LDMs are significantly impacting various fields, including medical imaging (synthesis and restoration), speech enhancement, and even physics simulation, by enabling the generation of realistic and diverse data for training and analysis where real data is scarce or difficult to obtain.
Papers
Stable Video Diffusion: Scaling Latent Video Diffusion Models to Large Datasets
Andreas Blattmann, Tim Dockhorn, Sumith Kulal, Daniel Mendelevitch, Maciej Kilian, Dominik Lorenz, Yam Levi, Zion English, Vikram Voleti, Adam Letts, Varun Jampani, Robin Rombach
$Z^*$: Zero-shot Style Transfer via Attention Rearrangement
Yingying Deng, Xiangyu He, Fan Tang, Weiming Dong