dc.rights.license | CC-BY-NC-ND | |
dc.contributor.advisor | Leeuwen, T. van | |
dc.contributor.author | Wegen, Just van der | |
dc.date.accessioned | 2025-08-14T12:01:02Z | |
dc.date.available | 2025-08-14T12:01:02Z | |
dc.date.issued | 2025 | |
dc.identifier.uri | https://studenttheses.uu.nl/handle/20.500.12932/49720 | |
dc.description.abstract | Computed tomography (CT) reconstruction transforms a set of X-ray measurements into
cross-sectional images of an object. This process is an ill-posed inverse problem, meaning
that small errors in the data can lead to large errors in the reconstruction. A common
approach to address this problem is through regularization. In this thesis, we present an
introduction to the CT inverse problem and construct a generative regularizer based on
principal component analysis (PCA), which incorporates prior structural information from
a set of training CT images. The reconstruction problem is formulated as the minimization
of a data-fidelity term, combined with a penalty that encourages the solution to remain
close to the PCA subspace. We solve this optimization problem with the sparse LSQR algorithm. Numerical experiments show that the PCA-based regularizer achieves up to a sevenfold reduction in mean squared error compared to unregularized or Tikhonov-regularized
methods, though at the cost of increased computation time. While the visual differences
between reconstructions are subtle, the PCA-regularized images display smoother homogeneous regions, demonstrating the potential benefits of incorporating data-driven priors in
CT reconstruction. | |
dc.description.sponsorship | Utrecht University | |
dc.language.iso | EN | |
dc.subject | This thesis addresses the ill-posed CT reconstruction problem using a generative regularizer based on PCA, incorporating structural priors from training data. The reconstruction is formulated as a data-fidelity minimization with a PCA-based penalty and solved via sparse LSQR. Experiments show up to a sevenfold MSE reduction and smoother homogeneous regions versus unregularized or Tikhonov methods, at the expense of higher computation. | |
dc.title | PCA-Based Generative Regularization for the CT Inverse Problem | |
dc.type.content | Bachelor Thesis | |
dc.rights.accessrights | Open Access | |
dc.subject.keywords | Prinicipal Component Analysis; PCA; CT; Computed Tomography; Computertomografie; Tomography; Tomografie Inverse problem; Inverse probleem; Regularization; Regularisatie; Ill-posed; Slecht gesteld; Tikhonov; X-ray; Generative; Generative model; Generatief model; LSQR; Least Squares | |
dc.subject.courseuu | Mathematics | |
dc.thesis.id | 51644 | |