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Nonlocal low-rank and sparse matrix decomposition for spectral CT reconstruction

机译:光谱CT重建的非识别低级和稀疏矩阵分解

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摘要

Spectral computed tomography (CT) has been a promising technique in research and clinics because of its ability to produce improved energy resolution images with narrow energy bins. However, the narrow energy bin image is often affected by serious quantum noise because of the limited number of photons used in the corresponding energy bin. To address this problem, we present an iterative reconstruction method for spectral CT using nonlocal low-rank and sparse matrix decomposition (NLSMD), which exploits the self-similarity of patches that are collected in multi-energy images. Specifically, each set of patches can be decomposed into a low-rank component and a sparse component, and the low-rank component represents the stationary background over different energy bins, while the sparse component represents the rest of the different spectral features in individual energy bins. Subsequently, an effective alternating optimization algorithm was developed to minimize the associated objective function. To validate and evaluate the NLSMD method, qualitative and quantitative studies were conducted by using simulated and real spectral CT data. Experimental results show that the NLSMD method improves spectral CT images in terms of noise reduction, artifact suppression and resolution preservation.
机译:光谱计算断层扫描(CT)是研究和诊所的有希望的技术,因为它能够产生具有窄能量箱的改进的能量分辨率图像。然而,由于相应的能量箱中使用的光子数量有限,窄能量箱图像通常受到严重量子噪声的影响。为了解决这个问题,我们介绍了使用非识别低级和稀疏矩阵分解(NLSMD)的光谱CT的迭代重建方法,该分解(NLSMD)利用在多能量图像中收集的斑块的自相似性。具体地,每组贴片可以分解成低秩分量和稀疏分量,并且低秩分量表示在不同的能量箱上的静止背景,而稀疏组件代表单个能量中的其他频谱特征的其余特征垃圾箱。随后,开发了一种有效的交替优化算法以最小化相关的目标函数。为了验证和评估NLSMD方法,通过使用模拟和实线CT数据进行定性和定量研究。实验结果表明,NLSMD方法在降噪,伪影抑制和分辨率保存方面改善了光谱CT图像。

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