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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Penalized weighted least-squares approach for multienergy computed tomography image reconstruction via structure tensor total variation regularization
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Penalized weighted least-squares approach for multienergy computed tomography image reconstruction via structure tensor total variation regularization

机译:基于结构张量总变化正则化的多能计算机断层图像重建的惩罚加权最小二乘方法

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摘要

Multienergy computed tomography (MECT) allows identifying and differentiating different materials through simultaneous capture of multiple sets of energy-selective data belonging to specific energy windows. However, because sufficient photon counts are not available in each energy window compared with that in the whole energy window, the MECT images reconstructed by the analytical approach often suffer from poor signal-to-noise and strong streak artifacts. To address the particular challenge, this work presents a penalized weighted least-squares (PWLS) scheme by incorporating the new concept of structure tensor total variation (STV) regularization, which is henceforth referred to as 'PWLS-STV' for simplicity. Specifically, the STV regularization is derived by penalizing higher-order derivatives of the desired MECT images. Thus it could provide more robust measures of image variation, which can eliminate the patchy artifacts often observed in total variation (TV) regularization. Subsequently, an alternating optimization algorithm was adopted to minimize the objective function. Extensive experiments with a digital XCAT phantom and meat specimen clearly demonstrate that the present PWLS-STV algorithm can achieve more gains than the existing TV-based algorithms and the conventional filtered backpeojection (FBP) algorithm in terms of both quantitative and visual quality evaluations. (C) 2016 Elsevier Ltd. All rights reserved.
机译:多能计算机断层扫描(MECT)可以通过同时捕获属于特定能量窗口的多组能量选择数据来识别和区分不同的材料。但是,由于与整个能量窗口相比,每个能量窗口中没有足够的光子计数,因此通过分析方法重建的MECT图像通常会遭受较差的信噪比和强烈的条纹伪影。为了解决特定挑战,这项工作提出了一种受罚加权最小二乘(PWLS)方案,该方案结合了结构张量总变化(STV)正则化的新概念,为简化起见,此后称为“ PWLS-STV”。具体而言,通过惩罚所需MECT图像的高阶导数来推导STV正则化。因此,它可以提供更稳定的图像变化量度,从而可以消除在总变化量(TV)正则化中经常观察到的斑驳伪影。随后,采用交替优化算法以最小化目标函数。用数字XCAT幻象和肉标本进行的大量实验清楚地表明,就定量和视觉质量评估而言,与现有的基于TV的算法和常规的过滤背射(FBP)算法相比,本PWLS-STV算法可实现更多的收益。 (C)2016 Elsevier Ltd.保留所有权利。

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