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首页> 外文期刊>Journal of Microscopy >Comparative performance assessment of beam hardening correction algorithms applied on simulated data sets
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Comparative performance assessment of beam hardening correction algorithms applied on simulated data sets

机译:模拟数据集应用光束硬化校正算法的比较性能评估

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Summary Beam hardening artefacts deteriorate the reconstructed image quality in industrial computed tomography. The appearances of beam hardening artefacts can be cupping effects or streaks. They impair the image fidelity to the object being scanned. This work aims at comparing a variety of commonly used beam hardening correction algorithms in the context of industrial computed tomography metrology. We choose four beam hardening correction algorithms of different types for the comparison. They are a single‐material linearization algorithm, a multimaterial linearization algorithm, a dual‐energy algorithm and an iterative reconstruction algorithm. Each beam hardening correction algorithm is applied to simulated data sets of a dual‐material phantom consisting of multiple rods. The comparison is performed on data sets simulated both under ideal conditions and with the addition of quantum noise. The performance of each algorithm is assessed with respect to its effect on the final image quality (contrast‐to‐noise ratio, spatial resolution), artefact reduction (streaks, cupping effects) and dimensional measurement deviations. The metrics have been carefully designed in order to achieve a robust and quantifiable assessment. The results suggest that the single‐material linearization algorithm can reduce beam hardening artefacts in the vicinity of one material. The multimaterial linearization algorithm can further reduce beam hardening artefacts induced by the other material and improve the dimensional measurement accuracy. The dual‐energy method can eliminate beam hardening artefacts, and improve the low contrast visibility and dimensional measurement accuracy. The iterative algorithm is able to eliminate beam hardening streaks. However, it induces aliasing patterns around the object edge, and its performance depends critically upon computational power. The contrast‐to‐noise ratio and spatial resolution are declined by noise. Noise also increases the difficulty of image segmentation and quantitative analysis. Lay Description X‐ray computed tomography (CT) is a major breakthrough in digital imaging technology in the late 20th century. First used as an important tool in medical imaging, CT has gradually introduced to the nonmedical areas (e.g. industrial nondestructive testing). Inherently CT is more prone to artefacts comparing to the conventional real‐time X‐ray image. Beam hardening artefacts caused by the polychromatic nature of X‐ray spectra are known to deteriorate the reconstructed image quality in industrial CT. A number of beam hardening correction algorithms exist and are used across medical CT. However, there is a lack of research on their effectiveness on industrial CT. This study presents an in‐depth beam hardening correction algorithm comparison in industrial CT. Since this study takes various factors of the algorithm performance into account, it provides insights of the advantages and disadvantages of each algorithm and assists the choice of algorithm to meet specific needs of industry. Existing beam hardening correction algorithms are divided into the following four categories: linearization, segmentation based linearization, dual‐energy and iterative methods. Since the linearization method can only correct single‐material objects, we did not include it in the comparative study. Among the remaining categories, we chose one from each category for comparison, for methods in one peer category share similar physical and mathematical principles. The methods are polynomial fit, Joseph segmentation, dual energy and IMPACT iterative method. This study uses a simulated polychromatic data set of a multimaterial phantom. The central slice of the corrected reconstructions is then assessed and the results are presented. In this study, we will compare beam hardening correction methods with respect to their performance on image quality, the removal of image artefacts and the influence on dimensional accuracy.
机译:总结光束硬化伪影使工业计算机断层扫描中的重建图像质量恶化。光束硬化艺术品的外表可以是拔罐效果或条纹。它们损害了被扫描的对象的图像保真度。这项工作旨在比较工业计算机断层扫描计量学的背景下的各种常用的光束硬化校正算法。我们选择四个不同类型的光束硬化校正算法进行比较。它们是一种单材料线性化算法,多国线性化算法,双能算法和迭代重建算法。每个光束硬化校正算法应用于由多个杆组成的双重材料幻影的模拟数据组。对在理想条件下模拟的数据集和添加量子噪声的数据集上执行比较。关于其对最终图像质量(对比度与噪声比,空间分辨率),伪影(条纹,拔罐效应)和尺寸测量偏差的影响来评估每种算法的性能。经过精心设计的指标,以实现稳健和可量化的评估。结果表明,单材料线性化算法可以减少一种材料附近的光束硬化伪影。多维线性化算法可以进一步减少由其他材料引起的光束硬化伪影,提高尺寸测量精度。双能方法可以消除光束硬化艺术品,并提高对比度的低对比度和尺寸测量精度。迭代算法能够消除光束硬化条纹。然而,它引起对象边缘周围的锯齿模式,并且其性能在计算能力时尺寸统称。噪声下降到噪声比和空间分辨率。噪声还提高了图像分割和定量分析的难度。 Lay描述X射线计算机断层扫描(CT)是20世纪后期数字成像技术的重大突破。首先用作医学成像中的重要工具,CT逐渐引入非医疗区域(例如,工业无损检测)。固有的CT更容易发生与传统的实时X射线图像比较的人工制品。已知由X射线光谱的多色性引起的光束硬化伪影是在工业CT中劣化的重建图像质量。存在许多光束硬化校正算法并跨医疗CT使用。然而,缺乏对其工业CT的有效性的研究。本研究介绍了工业CT中深入的光束硬化校正算法比较。由于本研究考虑了算法性能的各种因素,因此它提供了每种算法的优缺点和缺点的见解,并有助于选择算法以满足行业的特定需求。现有的光束硬化校正算法分为以下四类:线性化,基于分割的线性化,双能和迭代方法。由于线性化方法只能纠正单材料对象,因此我们在比较研究中不包括它。在剩余的类别中,我们从每个类别中选择了一个比较,对于一个同行类别中的方法,共享类似的物理和数学原理。该方法是多项式拟合,约瑟夫分割,双能和冲击迭代方法。本研究使用多国幻影的模拟多色数据集。然后评估校正重建的中央切片,并呈现结果。在这项研究中,我们将比较光束硬化校正方法对图像质量的性能,去除图像伪影和对尺寸精度的影响。

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