Generative AI and Diffusion Models: a Statistical Physics Analysis (3/3)
By Giulio Biroli
Exploring the High-dimensional Random Landscapes of Data Science (3/3)
By Gérard Ben Arous
By Ozan Öktem
Appears in collection : 2019 - T1 - WS3 - Imaging and machine learning
The talk will outline recent approaches for using (deep) convolutional neural networks to solve a wide range of inverse problems, such as tomographic image reconstruction. Emphasis is on learned iterative schemes that use a neural network architecture for reconstruction that includes physics based models for how data is generated. The talk will also discuss recent developments in using generative adversarial networks for uncertainty quantification in inverse problems.