Flow Based Model
Flow-based models are generative models that learn a transformation, or "flow," between a simple distribution (like a Gaussian) and a complex target distribution, enabling efficient sampling of realistic data. Current research emphasizes improving sampling speed and quality through techniques like stochastic sampling, velocity refinement, and the development of bespoke solvers for the underlying ordinary differential equations. These advancements are driving applications in diverse fields, including image generation, medical image synthesis, and scientific data analysis, where they offer advantages in speed, quality, and uncertainty quantification compared to alternative methods.
Papers
October 26, 2023
August 8, 2023
July 27, 2023
May 24, 2023
May 19, 2023
March 29, 2023
February 16, 2023
October 12, 2022
September 18, 2022
August 26, 2022
August 24, 2022
July 6, 2022
March 21, 2022