2022
DOI: 10.48550/arxiv.2201.09318
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Sparse-view Cone Beam CT Reconstruction using Data-consistent Supervised and Adversarial Learning from Scarce Training Data

Abstract: Reconstruction of CT images from a limited set of projections through an object is important in several applications ranging from medical imaging to industrial settings. As the number of available projections decreases, traditional reconstruction techniques such as the FDK algorithm and modelbased iterative reconstruction methods perform poorly. Recently, data-driven methods such as deep learning-based reconstruction have garnered a lot of attention in applications because they yield better performance when en… Show more

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“…1. It is based on a 128x128 CT slice of a walnut [24], to which we applied a time-varying locally affine warp [25]. Reconstructed objects at times t ∈ [0, P − 1]/P are shown in Fig.…”
Section: Methodsmentioning
confidence: 99%
“…1. It is based on a 128x128 CT slice of a walnut [24], to which we applied a time-varying locally affine warp [25]. Reconstructed objects at times t ∈ [0, P − 1]/P are shown in Fig.…”
Section: Methodsmentioning
confidence: 99%