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Non-Local Low-Rank Cube-Based Tensor Factorization for Spectral CT Reconstruction

机译:基于非局部低级立方体的张量分解,用于光谱CT重建

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摘要

Spectral computed tomography (CT) reconstructs material-dependent attenuation images from the projections of multiple narrow energy windows, which is meaningful for material identification and decomposition. Unfortunately, the multi-energy projection datasets usually have lower signal-noise ratios (SNR). Very recently, a spatial-spectral cube matching frame (SSCMF) was proposed to explore the non-local spatial-spectral similarities for spectral CT. This method constructs a group by clustering up a seriesof non-local spatial-spectralcubes. Thesmall size of spatial patches for such a group makes the SSCMF fail to fully encode the sparsity and low-rank properties. The hard-thresholding and collaboration filtering in the SSCMF also cause difficulty in recovering the image features and spatial edges. While all the steps are operated on 4-D group, the huge computational cost andmemory loadmight not be affordable in practice. To avoid the above limitations and further improve the image quality, we first formulate a non-local cube-based tensor instead of group to encode the sparsity and low-rank properties. Then, as a newregularizer, the Kronecker-basis-representation tensor factorization is employed into a basic spectral CT reconstruction model to enhance the capability of image feature extraction and spatial edge preservation, generating a non-local low-rank cube-based tensor factorization (NLCTF) method. Finally, the split-Bregman method is adopted to solve the NLCTF model. Both numerical simulations and preclinical mouse studies are performed to validate and evaluate the NLCTF algorithm. The results show that the NLCTF method outperforms the other state-of-the-art competing algorithms.
机译:光谱计算断层扫描(CT)从多个窄能量窗口的投影重建依赖于材料的衰减图像,这对于材料识别和分解是有意义的。不幸的是,多能量投影数据集通常具有较低的信噪比(SNR)。最近,提出了一种空间光谱多维数据集匹配帧(SSCMF)以探索光谱CT的非局部空间光谱相似性。该方法通过群集非局部空间光谱谱来构造一个组。此类组的空间贴片大小使SSCMF无法完全编码稀疏性和低秩属性。 SSCMF中的硬阈值和协作滤波也会导致难以恢复图像特征和空间边缘。虽然所有步骤在4-D集团上运营,但在实践中,巨大的计算成本和莫里莫语载荷无法实惠。为了避免上述限制并进一步提高图像质量,我们首先制定基于非本地立方体的张量代替组以编码稀疏性和低秩属性。然后,作为NewRegularizer,Kronecker基础表示张量分解在基本光谱CT重建模型中,以增强图像特征提取和空间边缘保存的能力,产生非局部低级立方体的张量分解( nlctf)方法。最后,采用拆分制BREGMAN方法来解决NLCTF模型。进行数值模拟和临床前鼠标研究以进行验证和评估NLCTF算法。结果表明,NLCTF方法优于其他最先进的竞争算法。

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