Inverse Flow and Consistency Models
Journal:
arXiv
Published Date:
Feb 17, 2025
Abstract
Inverse generation problems, such as denoising without ground truth
observations, is a critical challenge in many scientific inquiries and
real-world applications. While recent advances in generative models like
diffusion models, conditional flow matching, and consistency models achieved
impressive results by casting generation as denoising problems, they cannot be
directly used for inverse generation without access to clean data. Here we
introduce Inverse Flow (IF), a novel framework that enables using these
generative models for inverse generation problems including denoising without
ground truth. Inverse Flow can be flexibly applied to nearly any continuous
noise distribution and allows complex dependencies. We propose two algorithms
for learning Inverse Flows, Inverse Flow Matching (IFM) and Inverse Consistency
Model (ICM). Notably, to derive the computationally efficient, simulation-free
inverse consistency model objective, we generalized consistency training to any
forward diffusion processes or conditional flows, which have applications
beyond denoising. We demonstrate the effectiveness of IF on synthetic and real
datasets, outperforming prior approaches while enabling noise distributions
that previous methods cannot support. Finally, we showcase applications of our
techniques to fluorescence microscopy and single-cell genomics data,
highlighting IF's utility in scientific problems. Overall, this work expands
the applications of powerful generative models to inversion generation
problems.