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Towards real-time 3D geometric nonlinear diffusion filter and its application to CT and MR imaging

机译:走向实时3D几何非线性扩散滤波器及其在CT和MR成像中的应用

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We propose two near real-time nonlinear anisotropic diffusion filtering (NADF) methods for the 2D and 3D X-ray computed tomography (CT) and magnetic resonance (MR) image denoising. Typically, NADFs are preferred for the medical image denoising due to its edge preserving feature though they are computationally expensive. Recently, a computation-time efficient 2D NADF has been proposed which uses local pixel intensity-based geometric parameters for diffusion. But it has limitations resulting from (i) its assumption that the neighboring pixels are non-noisy while deciding on an interrogated pixel being noisy or not, and (ii) its confinement of working only on a 2D image. Motivated from this, we propose an improved 2D NADF method that uses additional neighboring pixels in an effective way to lower the noise impact on the estimated geometric parameters. We also extend our 2D method into 3D that considers all the three directions for information diffusion. The performance of the proposed methods is evaluated using a 3D synthetic phantom, and in vivo CT and MR data which demonstrates an average signal-to-noise-ratio-gain improvement of approximately 58% in 2D and 96% in 3D phantom data, and approximately 79% in 2D and 127% in 3D in vivo data, compared to the state-of-the-art method.
机译:我们为2D和3D X射线计算机断层扫描(CT)和磁共振(MR)图像去噪提出了两种近实时非线性各向异性扩散滤波(NADF)方法。典型地,NADF由于其边缘保留特征而优选用于医学图像降噪,尽管它们在计算上是昂贵的。最近,已经提出了一种计算时间有效的二维NADF,其使用基于局部像素强度的几何参数进行扩散。但是它具有以下局限性:(i)假设相邻像素不带噪,同时决定所询问的像素是否带噪;以及(ii)仅限于在2D图像上工作的局限性。因此,我们提出了一种改进的2D NADF方法,该方法以有效的方式使用其他相邻像素来降低噪声对估计的几何参数的影响。我们还将2D方法扩展到考虑了信息传播的所有三个方向的3D中。使用3D合成体模和体内CT和MR数据评估了所提出方法的性能,该数据显示了2D体模和3D体模数据的平均信噪比增益平均提高了约58%,以及与最新技术相比,体内2D数据约占79%,3D 3D数据约占127%。

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