CVFeb 17, 2025

Data-Efficient Limited-Angle CT Using Deep Priors and Regularization

arXiv:2502.12293v21 citationsh-index: 1SCIA
Originality Incremental advance
AI Analysis

This addresses the challenge of reducing radiation exposure and enabling CT scans in constrained settings, though it is incremental as it builds on existing regularization and deep prior techniques.

The paper tackles the ill-posed problem of reconstructing images from limited-angle CT scans with very low data, achieving results comparable to state-of-the-art synthetic data-driven methods using only 12 data points.

Reconstructing an image from its Radon transform is a fundamental computed tomography (CT) task arising in applications such as X-ray scans. In many practical scenarios, a full 180-degree scan is not feasible, or there is a desire to reduce radiation exposure. In these limited-angle settings, the problem becomes ill-posed, and methods designed for full-view data often leave significant artifacts. We propose a very low-data approach to reconstruct the original image from its Radon transform under severe angle limitations. Because the inverse problem is ill-posed, we combine multiple regularization methods, including Total Variation, a sinogram filter, Deep Image Prior, and a patch-level autoencoder. We use a differentiable implementation of the Radon transform, which allows us to use gradient-based techniques to solve the inverse problem. Our method is evaluated on a dataset from the Helsinki Tomography Challenge 2022, where the goal is to reconstruct a binary disk from its limited-angle sinogram. We only use a total of 12 data points--eight for learning a prior and four for hyperparameter selection--and achieve results comparable to the best synthetic data-driven approaches.

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