Diffusion Explainer
Diffusion explainers are generative models that leverage the principles of diffusion processes to create new data samples, primarily images and other high-dimensional data, by reversing a noise-addition process. Current research focuses on improving efficiency (e.g., one-step diffusion), enhancing controllability (e.g., through classifier-free guidance and conditioning on various modalities like text and 3D priors), and addressing challenges like data replication and mode collapse. These advancements are impacting diverse fields, from image super-resolution and medical imaging to robotics, recommendation systems, and even scientific simulations, by providing powerful tools for data generation, manipulation, and analysis.
Papers
March 27, 2024
March 26, 2024
March 19, 2024
March 18, 2024
March 16, 2024
March 14, 2024
March 7, 2024
March 6, 2024
March 4, 2024
March 2, 2024
February 27, 2024
February 26, 2024
February 22, 2024
February 21, 2024
February 12, 2024