Denoising Diffusion Probabilistic Model
Denoising Diffusion Probabilistic Models (DDPMs) are generative AI models that create new data by reversing a noise diffusion process, aiming to learn complex data distributions and generate high-fidelity samples. Current research focuses on improving model efficiency and fidelity, exploring variations like conditional DDPMs and integrating them with other architectures such as transformers and VAEs for specific tasks (e.g., image inpainting, medical image synthesis, and graph generation). DDPMs are proving impactful across diverse fields, enabling advancements in areas like medical imaging, autonomous driving, and financial forecasting through improved data generation, anomaly detection, and prediction capabilities.
Papers
A Survey on Deep Tabular Learning
Shriyank Somvanshi, Subasish Das, Syed Aaqib Javed, Gian Antariksa, Ahmed Hossain
Rician Denoising Diffusion Probabilistic Models For Sodium Breast MRI Enhancement
Shuaiyu Yuan, Tristan Whitmarsh, Dimitri A Kessler, Otso Arponen, Mary A McLean, Gabrielle Baxter, Frank Riemer, Aneurin J Kennerley, William J Brackenbury, Fiona J Gilbert, Joshua D Kaggie