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Convergence of Ray- and Pixel-Driven Discretization Frameworks in the Strong Operator Topology

Published: March 5, 2025 | arXiv ID: 2503.03069v2

By: Richard Huber

Potential Business Impact:

Makes medical scans clearer and more accurate.

Business Areas:
Laser Hardware, Science and Engineering

Tomography is a central tool in medical applications, allowing doctors to investigate patients' interior features. The Radon transform (in two dimensions) is commonly used to model the measurement process in parallel-beam CT. Suitable discretization of the Radon transform and its adjoint (called the backprojection) is crucial. The most commonly used discretization approach combines the ray-driven Radon transform with the pixel-driven backprojection, as anecdotal reports describe these as showing the best approximation performance. However, there is little rigorous understanding of induced approximation errors. These methods involve three discretization parameters: the spatial-, detector-, and angular resolutions. Most commonly, balanced resolutions are used, i.e., the same (or similar) spatial- and detector resolutions are employed. We present a novel interpretation of ray- and pixel-driven discretizations as `convolutional methods'. This allows for a structured analysis that can explain observed behavior. In particular, we prove convergence in the strong operator topology of the ray-driven Radon transform and the pixel-driven backprojection under balanced resolutions, thus theoretically justifying this approach. In particular, with high enough resolutions one can approximate the Radon transform arbitrarily well.

Country of Origin
🇩🇰 Denmark

Page Count
29 pages

Category
Mathematics:
Numerical Analysis (Math)