Product of Gaussian Mixture Diffusion Model for non-linear MRI Inversion
Journal:
arXiv
Published Date:
Jan 15, 2025
Abstract
Diffusion models have recently shown remarkable results in magnetic resonance
imaging reconstruction. However, the employed networks typically are black-box
estimators of the (smoothed) prior score with tens of millions of parameters,
restricting interpretability and increasing reconstruction time. Furthermore,
parallel imaging reconstruction algorithms either rely on off-line coil
sensitivity estimation, which is prone to misalignment and restricting sampling
trajectories, or perform per-coil reconstruction, making the computational cost
proportional to the number of coils. To overcome this, we jointly reconstruct
the image and the coil sensitivities using the lightweight,
parameter-efficient, and interpretable product of Gaussian mixture diffusion
model as an image prior and a classical smoothness priors on the coil
sensitivities. The proposed method delivers promising results while allowing
for fast inference and demonstrating robustness to contrast out-of-distribution
data and sampling trajectories, comparable to classical variational penalties
such as total variation. Finally, the probabilistic formulation allows the
calculation of the posterior expectation and pixel-wise variance.