Diffusion priors for Bayesian 3D reconstruction from incomplete measurements
Journal:
arXiv
Published Date:
Dec 19, 2024
Abstract
Many inverse problems are ill-posed and need to be complemented by prior
information that restricts the class of admissible models. Bayesian approaches
encode this information as prior distributions that impose generic properties
on the model such as sparsity, non-negativity or smoothness. However, in case
of complex structured models such as images, graphs or three-dimensional (3D)
objects,generic prior distributions tend to favor models that differ largely
from those observed in the real world. Here we explore the use of diffusion
models as priors that are combined with experimental data within a Bayesian
framework. We use 3D point clouds to represent 3D objects such as household
items or biomolecular complexes formed from proteins and nucleic acids. We
train diffusion models that generate coarse-grained 3D structures at a medium
resolution and integrate these with incomplete and noisy experimental data. To
demonstrate the power of our approach, we focus on the reconstruction of
biomolecular assemblies from cryo-electron microscopy (cryo-EM) images, which
is an important inverse problem in structural biology. We find that posterior
sampling with diffusion model priors allows for 3D reconstruction from very
sparse, low-resolution and partial observations.