Non-local Low-rank Cube-based Tensor Factorization for Spectral CT Reconstruction
Weiwen Wu, Fenglin Liu, Yanbo Zhang, Qian Wang, Hengyong Yu

TL;DR
This paper introduces NLCTF, a novel tensor factorization method for spectral CT reconstruction that leverages non-local low-rank cube-based tensors and KBR regularization to improve image quality and edge preservation.
Contribution
It proposes a non-local cube-based tensor regularizer with KBR tensor factorization for spectral CT, addressing computational limitations and enhancing feature extraction.
Findings
NLCTF outperforms existing methods in simulations
Improves image quality and edge preservation in spectral CT
Validated on preclinical mouse studies
Abstract
Spectral computed tomography (CT) reconstructs material-dependent attenuation images with the projections of multiple narrow energy windows, it is meaningful for material identification and decomposition. Unfortunately, the multi-energy projection dataset always contains strong complicated noise and result in the projections has a lower signal-noise-ratio (SNR). Very recently, the spatial-spectral cube matching frame (SSCMF) was proposed to explore the non-local spatial-spectrum similarities for spectral CT. The method constructs such a group by clustering up a series of non-local spatial-spectrum cubes. The small size of spatial patch for such a group make SSCMF fails to encode the sparsity and low-rank properties. In addition, the hard-thresholding and collaboration filtering operation in the SSCMF are also rough to recover the image features and spatial edges. While for all steps are…
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