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Denoising CT Images using Median based Filters: a Review

机译:使用基于中值的滤波器对CT图像进行降噪:综述

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Medical imaging is one of the essential tools for evidence-based medical diagnosis. However, salt and pepper noise could corrupt the original image, reducing the overall image quality. Computed tomography (CT) images database were used. The filter execution and evaluation algorithm were implemented using MATLAB environment. This article was conducted to study the performance of four different median based filters standard median filter (SMF), adaptive median filter AMF, center weight median filter (CWMF), and progressive switching median filter (PSMF), when applied to medical images. Noise immunity and edge-preserving were evaluated to characterizing the filtrations processes, by means of statistical (texture) and mathematical measures Peak Signal to Noise Ratio (PSNR), Mean Square Error (MSE), Correlation Ratio (CORR), and Image Enhancement Factor (IEF) for noise reduction, and automatic edge detection as visual evaluation for edges. The results shown that the Adaptive Median Filter(AMF) can remove the salt and pepper noise from CT image, the AMF algorithm maintain the edge of the image and detail information of the objects, And the overall filters comparison indicates a quite effective noise removal and satisfactory performance of AMF among others.
机译:医学成像是基于证据的医学诊断的重要工具之一。但是,盐和胡椒粉噪声可能会破坏原始图像,从而降低整体图像质量。使用计算机断层扫描(CT)图像数据库。滤波器的执行和评估算法是在MATLAB环境下实现的。本文旨在研究应用于医学图像时四种不同的基于中值的滤波器,标准中值滤波器(SMF),自适应中值滤波器AMF,中心权重中值滤波器(CWMF)和逐行切换中值滤波器(PSMF)的性能。通过统计(纹理)和数学测量,评估了抗噪性和边缘保留特性,以表征过滤过程,包括峰信噪比(PSNR),均方误差(MSE),相关比(CORR)和图像增强因子(IEF)用于降噪,并自动边缘检测,作为边缘的视觉评估。结果表明,自适应中值滤波器(AMF)可以去除CT图像中的盐和胡椒粉噪声,AMF算法可以保持图像边缘和物体细节信息,整体滤波器比较表明噪声去除效果非常有效。 AMF的表现令人满意。

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