Larsson Joel, Båth Magnus, Thilander-Klang Anne
University of Gothenburg, Sahlgrenska Academy, Institute of Clinical Sciences, Department of Medical Radiation Sciences, Gothenburg, Sweden.
NU Hospital Group, Section of Diagnostic Imaging and Functional Medicine, Trollhättan, Sweden.
J Med Imaging (Bellingham). 2023 May;10(3):033504. doi: 10.1117/1.JMI.10.3.033504. Epub 2023 Jun 15.
We developed a method to visualize the image distortion induced by nonlinear noise reduction algorithms in computed tomography (CT) systems.
Nonlinear distortion was defined as the induced residual when testing a reconstruction algorithm by the criteria for a linear system. Two types of images were developed: a nonlinear distortion of an object () image and a nonlinear distortion of noise () image to visualize the nonlinear distortion induced by an algorithm. Calculation of the images requires access to the sinogram data, which is seldomly fully provided. Hence, an approximation of the image was estimated. Using simulated CT acquisitions, four noise levels were added onto forward projected sinograms of a typical CT image; these were noise reduced using a median filter with the simultaneous iterative reconstruction technique or a total variation filter with the conjugate gradient least-squares algorithm. The linear reconstruction technique filtered back-projection was also analyzed for comparison.
Structures in the image indicated contrast and resolution reduction of the nonlinear denoising. Although the approximated image represented the original image well, it had a higher random uncertainty. The image for the median filter indicated both stochastic variations and structures reminding of the object while for the total variation filter only stochastic variations were indicated.
The developed images visualize nonlinear distortions of denoising algorithms. The object may be distorted by the noise and vice versa. Analyzing the distortion correlated to the object is more critical than analyzing a distortion of stochastic variations. The absence of nonlinear distortion may measure the robustness of the denoising algorithm.
我们开发了一种方法,用于可视化计算机断层扫描(CT)系统中非线性降噪算法引起的图像失真。
非线性失真是指按照线性系统的标准测试重建算法时产生的诱导残余。开发了两种类型的图像:物体()图像的非线性失真和噪声()图像的非线性失真,以可视化算法引起的非线性失真。图像的计算需要获取很少能完全提供的正弦图数据。因此,估算了图像的近似值。使用模拟的CT采集,在典型CT图像的正向投影正弦图上添加了四个噪声水平;使用带有同步迭代重建技术的中值滤波器或带有共轭梯度最小二乘算法的全变差滤波器对这些噪声进行降噪。还对线性重建技术滤波反投影进行了分析以作比较。
图像中的结构表明非线性去噪会导致对比度和分辨率降低。尽管近似的图像能很好地表示原始图像,但它具有较高的随机不确定性。中值滤波器的图像既显示了随机变化,也显示了让人联想到物体的结构,而全变差滤波器的图像仅显示了随机变化。
所开发的图像可可视化去噪算法的非线性失真。物体可能会因噪声而失真,反之亦然。分析与物体相关的失真比分析随机变化的失真更为关键。不存在非线性失真可以衡量去噪算法的稳健性。