首页|积分不变量约束下的多色X射线投影分解

积分不变量约束下的多色X射线投影分解

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通过对多电压下多色X射线投影进行分解可获取窄能谱投影,进而实现多能谱计算机断层扫描(CT)成像.为了提高多能谱CT图像衰减系数表征的精度,提出了一种积分不变量约束下的多色X射线投影分解算法.该算法引入投影积分不变量约束,建立新的多色X射线投影分解模型.将X射线能谱信息作为未知量,利用二次罚函数方法将积分不变量约束转化到目标函数中,利用KKT(Karush-Kuhn-Tucker)条件求解模型的迭代公式.实验结果表明,与已有方法相比,本文算法得到的窄能谱重建图像硬化伪影减弱,衰减系数值与参考理论值的差异更小,衰减系数的精度更高.
Multicolor X-Ray Projection Decomposition Under Constraint of Integral Invariants
Objective Multispectral computed tomography(CT)imaging is a crucial tool in modern imaging technology.However,two key challenges exist in conventional multispectral CT image reconstruction:severe beam hardening artifacts and insufficient accuracy in representing the attenuation coefficient.Significant efforts have been made to address these issues,such as the development of photon counting detectors.However,limitations in counting rate and imaging efficiency persist.To enhance the accuracy of attenuation coefficient representation and mitigate these limitations,we propose a multicolor X-ray projection decomposition algorithm.Methods The proposed algorithm,operating under the constraint of integral invariants,builds upon the theoretical model for multicolor X-ray projection imaging.Unlike conventional approaches,this improved model treats X-ray energy spectrum as an unknown variable.Integral invariant constraints are incorporated into the objective function using the quadratic penalty method,and the Karush-Kuhn-Tucker(KKT)conditions are employed to derive an iterative solution.This allows for the extraction of narrow energy spectrum projections,which are subsequently used to reconstruct narrow spectrum CT images.Results and Discussions To evaluate the efficacy of the proposed model,we assess its ability to reduce beam hardening artifacts and improve the accuracy of the attenuation coefficient.We use the coefficient of variation(CV)as a key metric to measure artifact reduction in narrow energy spectrum images—the lower the CV value,the more effective the artifact removal.In addition,we compare the attenuation coefficients of reconstructed images from the improved model and a baseline model against theoretical reference values.By plotting the results in line graphs,the differences in performance between the models are visually evident.Two test samples are used:1)a combination of magnesium and aluminum to highlight the model's capability in distinguishing materials with different attenuation properties;2)granite,to evaluate the model's practicality in handling complex materials.The results show that the improved model significantly reduces beam hardening artifacts and produces more accurate attenuation coefficients compared to the baseline model.Conclusions The proposed multicolor X-ray projection decomposition algorithm incorporates integral invariant constraints into the theoretical model of multicolor X-ray projection imaging,establishing a new projection decomposition framework.The model is solved by the quadratic penalty function method and KKT conditions,resulting in narrow energy spectrum projections and the subsequent reconstruction of CT images.Experimental results demonstrate that this algorithm provides superior reconstruction quality compared to existing methods,with reduced hardening artifacts,smaller discrepancies in attenuation coefficients,and higher overall accuracy.

X-ray computed tomographymultienergy computed tomographymulticolor projection decompositionnarrow energy spectrum projectionintegral invariant

白文静、魏交统、陈平、李坤、潘晋孝

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中北大学数学学院,山西 太原 030051

中北大学信息与通信工程学院,山西 太原 030051

X射线计算机断层扫描 多能计算机断层扫描 多色投影分解 窄能谱投影 积分不变量

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(22)