Imaging Signal Recovery Using Neural Network Priors Under Uncertain Forward Model Parameters
Xiwen Chen, Wenhui Zhu, Peijie Qiu, Abolfazl Razi

TL;DR
This paper introduces a neural network-based framework that effectively reconstructs images in inverse imaging problems despite uncertainties in the forward model parameters, demonstrating comparable performance to known-parameter methods.
Contribution
The authors propose the Moment-Aggregation framework that considers multiple forward model parameters simultaneously during neural network training, improving reconstruction accuracy under model uncertainty.
Findings
Achieves reconstruction performance close to known-parameter methods.
Demonstrates effectiveness across multiple datasets and applications.
Provides theoretical convergence guarantees for the proposed framework.
Abstract
Inverse imaging problems (IIPs) arise in various applications, with the main objective of reconstructing an image from its compressed measurements. This problem is often ill-posed for being under-determined with multiple interchangeably consistent solutions. The best solution inherently depends on prior knowledge or assumptions, such as the sparsity of the image. Furthermore, the reconstruction process for most IIPs relies significantly on the imaging (i.e. forward model) parameters, which might not be fully known, or the measurement device may undergo calibration drifts. These uncertainties in the forward model create substantial challenges, where inaccurate reconstructions usually happen when the postulated parameters of the forward model do not fully match the actual ones. In this work, we devoted to tackling accurate reconstruction under the context of a set of possible forward…
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Taxonomy
TopicsImage and Signal Denoising Methods · Optical Systems and Laser Technology · Fault Detection and Control Systems
MethodsSparse Evolutionary Training
