Diffusion Probabilistic Model
Diffusion probabilistic models are generative models that create new data by reversing a noise-adding diffusion process, aiming to learn the underlying data distribution. Current research focuses on improving sampling efficiency through novel algorithms and architectures like ODE solvers and training-free methods, as well as adapting these models to diverse tasks such as image classification, video segmentation, and scientific computing problems. Their ability to generate high-quality samples and quantify uncertainty makes them significant tools across various fields, impacting areas from medical image analysis and aerodynamic design to time series forecasting and material science.
Papers
Diffusion models as probabilistic neural operators for recovering unobserved states of dynamical systems
Katsiaryna Haitsiukevich, Onur Poyraz, Pekka Marttinen, Alexander Ilin
Diff-ETS: Learning a Diffusion Probabilistic Model for Electromyography-to-Speech Conversion
Zhao Ren, Kevin Scheck, Qinhan Hou, Stefano van Gogh, Michael Wand, Tanja Schultz