Noise Reduction for Magnetic Resonance Imaging by Using Edge Detection and Hybrid Mean Lee Filter Techniques

Z. A. Mustafa, B. A. Ibraheem, Kawther M. GissmAllah, R. Elmahdi, Akram I. Omara
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Abstract

In this article, spatial-domain filtering algorithms were developed to suppress additive noise in magnetic resonance (MR) imaging. It is difficult to suppress MR image noise because it corrupts almost all pixels in an image. The purpose of noise reduction is to curb the noise with high efficiency while keeping the edges and other detailed features as much as possible. The present article focused on developing quite efficient noise reduction by using an edge detection technique and hybrid mean Lee filters to suppress MR image noise quite effectively in spatial domain without yielding much distortion and blurring. The performances of the developed filter were compared with the existing filters in terms of universal quality index, method noise, and execution time. Among all existing filters, the edge detection technique and hybrid mean Lee filter was found to be best for suppressing MR image noise.
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利用边缘检测和混合均值李滤波技术降低磁共振成像噪声
本文提出了一种空间域滤波算法来抑制磁共振成像中的附加噪声。抑制MR图像噪声是困难的,因为它几乎破坏了图像中的所有像素。降噪的目的是在尽可能保留边缘和其他细节特征的同时,高效地抑制噪声。本文的重点是通过使用边缘检测技术和混合均值李滤波器来开发非常有效的降噪技术,以在空间域中非常有效地抑制MR图像噪声,而不会产生太多失真和模糊。将所开发的滤波器与现有滤波器在通用质量指数、方法噪声和执行时间方面的性能进行了比较。在现有的滤波器中,边缘检测技术和混合均值李滤波器是抑制MR图像噪声的最佳方法。
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