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首页> 外文期刊>Journal of X-ray science and technology >Joint regularization-based image reconstruction by combining data-driven tight frame and total variation for low-dose computed tomography
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Joint regularization-based image reconstruction by combining data-driven tight frame and total variation for low-dose computed tomography

机译:基于联合正则化的图像重建通过组合数据驱动的紧密帧和低剂量计算机断层扫描的总变化

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摘要

Since the excessive radiation dose may induce potential body lesion, the low-dose computed tomography (LDCT) is widely applied for clinical diagnosis and treatment. However, the dose reduction will inevitably cause severe noise and degrade image quality. Most state-of-the-art methods utilize a pre-determined regularizer to account for the prior images, which may be insufficient for the most images acquired in the clinical practice. This study proposed and investigated a joint regularization method combining a data-driven tight frame and total variation (DDTF-TV) to solve this problem. Unlike the existing methods that designed pre-determined sparse transform for image domain, data-driven regularizer introduced a learning strategy to adaptively and iteratively update the framelets of DDTF, which can preferably recover the detailed image structures. The other regularizer, TV term can reconstruct strong edges and suppress noise. The joint term, DDTF-TV, collaboratively affect detail preservation and noise suppression. The proposed new model was efficiently solved by alternating the direction method of the multipliers. Qualitative and quantitative evaluations were carried out in simulation and real data experiments to demonstrate superiority of the proposed DDTF-TV method. Both visual inspection and numerical accuracy analysis show the potential of the proposed method for improving image quality of the LDCT.
机译:由于过度的辐射剂量可以诱​​导潜在的身体病变,因此低剂量计算断层扫描(LDCT)被广泛应用于临床诊断和治疗。然而,剂量减少将不可避免地导致严重的噪声和降低图像质量。大多数最先进的方法利用预先确定的规则器来解释先前的图像,这对于在临床实践中获得的大多数图像可能不足。本研究提出并调查了一个联合正则化方法,将数据驱动的紧密帧和总变化(DDTF-TV)组合来解决这个问题。与用于图像域的预定稀疏变换设计的现有方法不同,数据驱动规范器引入了一种自适应和迭代地更新DDTF的帧的学习策略,其优选地恢复详细的图像结构。另一个规范器,电视术语可以重建强边和抑制噪声。联合术语,DDTF-TV,协作影响细节保存和噪声抑制。通过交替乘法器的方向方法有效地解决了所提出的新模型。在仿真和实际数据实验中进行了定性和定量评估,以证明所提出的DDTF-TV方法的优越性。目视检查和数值精度分析均显示提高LDCT图像质量的提出方法的潜力。

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