NACVLGIVDec 14, 2022

Convergent Data-driven Regularizations for CT Reconstruction

arXiv:2212.07786v213 citationsh-index: 55
AI Analysis

This work addresses CT reconstruction for medical imaging, offering incremental improvements with provable convergence guarantees.

The paper tackles the ill-posed inverse problem of CT image reconstruction by developing data-driven linear regularization methods that are provably convergent, resulting in smoother reconstructions than the training data.

The reconstruction of images from their corresponding noisy Radon transform is a typical example of an ill-posed linear inverse problem as arising in the application of computerized tomography (CT). As the (naive) solution does not depend on the measured data continuously, regularization is needed to re-establish a continuous dependence. In this work, we investigate simple, but yet still provably convergent approaches to learning linear regularization methods from data. More specifically, we analyze two approaches: One generic linear regularization that learns how to manipulate the singular values of the linear operator in an extension of our previous work, and one tailored approach in the Fourier domain that is specific to CT-reconstruction. We prove that such approaches become convergent regularization methods as well as the fact that the reconstructions they provide are typically much smoother than the training data they were trained on. Finally, we compare the spectral as well as the Fourier-based approaches for CT-reconstruction numerically, discuss their advantages and disadvantages and investigate the effect of discretization errors at different resolutions.

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