College of Mathematics and Statistics, Chongqing University, Chongqing, China.
Engineering Research Center of Industrial Computed Tomography Nondestructive Testing of the Education Ministry of China, Chongqing University, Chongqing, China.
J Xray Sci Technol. 2018;26(3):481-498. doi: 10.3233/XST-17334.
Restricted by the scanning environment in some CT imaging modalities, the acquired projection data are usually incomplete, which may lead to a limited-angle reconstruction problem. Thus, image quality usually suffers from the slope artifacts. The objective of this study is to first investigate the distorted domains of the reconstructed images which encounter the slope artifacts and then present a new iterative reconstruction method to address the limited-angle X-ray CT reconstruction problem.
The presented framework of new method exploits the structural similarity between the prior image and the reconstructed image aiming to compensate the distorted edges. Specifically, the new method utilizes l0 regularization and wavelet tight framelets to suppress the slope artifacts and pursue the sparsity. New method includes following 4 steps to (1) address the data fidelity using SART; (2) compensate for the slope artifacts due to the missed projection data using the prior image and modified nonlocal means (PNLM); (3) utilize l0 regularization to suppress the slope artifacts and pursue the sparsity of wavelet coefficients of the transformed image by using iterative hard thresholding (l0W); and (4) apply an inverse wavelet transform to reconstruct image. In summary, this method is referred to as "l0W-PNLM".
Numerical implementations showed that the presented l0W-PNLM was superior to suppress the slope artifacts while preserving the edges of some features as compared to the commercial and other popular investigative algorithms. When the image to be reconstructed is inconsistent with the prior image, the new method can avoid or minimize the distorted edges in the reconstructed images. Quantitative assessments also showed that applying the new method obtained the highest image quality comparing to the existing algorithms.
This study demonstrated that the presented l0W-PNLM yielded higher image quality due to a number of unique characteristics, which include that (1) it utilizes the structural similarity between the reconstructed image and prior image to modify the distorted edges by slope artifacts; (2) it adopts wavelet tight frames to obtain the first and high derivative in several directions and levels; and (3) it takes advantage of l0 regularization to promote the sparsity of wavelet coefficients, which is effective for the inhibition of the slope artifacts. Therefore, the new method can address the limited-angle CT reconstruction problem effectively and have practical significance.
在某些 CT 成像模式下,受扫描环境的限制,采集到的投影数据通常是不完整的,这可能导致有限角度重建问题。因此,图像质量通常会受到斜率伪影的影响。本研究的目的是首先研究遇到斜率伪影的重建图像的扭曲域,然后提出一种新的迭代重建方法来解决有限角度 X 射线 CT 重建问题。
新方法的提出框架利用先验图像和重建图像之间的结构相似性来补偿扭曲的边缘。具体来说,该方法利用 l0 正则化和小波紧框架来抑制斜率伪影并追求稀疏性。新方法包括以下 4 个步骤:(1)使用 SART 解决数据一致性问题;(2)利用先验图像和改进的非局部均值(PNLM)补偿因缺失投影数据而导致的斜率伪影;(3)利用 l0 正则化,通过迭代硬阈值(l0W)抑制斜率伪影并追求变换图像的小波系数的稀疏性;(4)应用逆小波变换重建图像。综上所述,该方法被称为“l0W-PNLM”。
数值实现表明,与商业和其他流行的调查算法相比,所提出的 l0W-PNLM 在抑制斜率伪影的同时,能够更好地保留一些特征的边缘。当要重建的图像与先验图像不一致时,新方法可以避免或最小化重建图像中的扭曲边缘。定量评估还表明,与现有算法相比,应用新方法可获得更高的图像质量。
本研究表明,所提出的 l0W-PNLM 由于具有许多独特的特点,可获得更高的图像质量,这些特点包括:(1)它利用重建图像和先验图像之间的结构相似性,通过斜率伪影来修改扭曲的边缘;(2)它采用小波紧框架来获取多个方向和多个层次的一阶和高阶导数;(3)它利用 l0 正则化来促进小波系数的稀疏性,这对于抑制斜率伪影非常有效。因此,该新方法可以有效地解决有限角度 CT 重建问题,具有实际意义。