TL;DR
This paper introduces MCAOL, a novel joint reconstruction method for dual-energy CT that leverages shared features to improve image quality and enable dose reduction, outperforming existing techniques in accuracy.
Contribution
The paper presents MCAOL, a new multi-channel convolutional analysis operator learning approach that jointly reconstructs dual-energy CT images with enhanced accuracy and reduced radiation dose.
Findings
MCAOL outperforms CAOL and traditional iterative methods in reconstruction accuracy.
The method effectively handles sparse-view and low-dose scenarios.
Experimental results validate improved image quality over state-of-the-art techniques.
Abstract
Objective. Dual-energy computed tomography (DECT) has the potential to improve contrast, reduce artifacts and the ability to perform material decomposition in advanced imaging applications. The increased number or measurements results with a higher radiation dose and it is therefore essential to reduce either number of projections per energy or the source X-ray intensity, but this makes tomographic reconstruction more ill-posed. Approach. We developed the multi-channel convolutional analysis operator learning (MCAOL) method to exploit common spatial features within attenuation images at different energies and we propose an optimization method which jointly reconstructs the attenuation images at low and high energies with a mixed norm regularization on the sparse features obtained by pre-trained convolutional filters through the convolutional analysis operator learning (CAOL)…
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