An Axis Based Mean Filter for Removing High-Intensity Salt and Pepper Noise

A. Kundu, Sumanta Banerje, Chittabarni Sarkar, Souptik Barman
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引用次数: 8

Abstract

In this work, we propose an Axis Based Mean Filtering (ABMF) method for removing high-intensity Salt and Pepper Noise from gray-scale images. The proposed method applies the concept of mean filter and uses only the terminal pixels within a window along a specific axis to predict the value of the central noisy pixel. The ABMF considers a fixed window size of 3×3. If the central pixel of the window is noisy, it tries to identify a straight line (referred to as axis) within the window passing through the central pixel such that the pixels on either side of the line are non-noisy. If such an axis is found, the noisy pixel is replaced by the mean of the pixels on either end of the axis. However, if such a line does not exist, the noisy pixel is replaced by the mean of all the non-noisy pixels within the window. Experimental results over a set of 34 images exhibit that the proposed ABMF outperforms the existing algorithms by 58% and 29% in terms of mean SSIM and mean PSNR respectively for noise-intensities ranging from 10%-90%.
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一种基于轴的均值滤波器去除高强度的椒盐噪声
在这项工作中,我们提出了一种基于轴的均值滤波(ABMF)方法,用于从灰度图像中去除高强度的盐和胡椒噪声。该方法采用均值滤波的概念,仅使用沿特定轴的窗口内的终端像素来预测中心噪声像素的值。ABMF考虑一个固定的窗口大小3×3。如果窗口的中心像素有噪声,则尝试在窗口内识别一条穿过中心像素的直线(称为轴),使得线两侧的像素是非噪声的。如果找到这样的轴,则用轴两端像素的平均值替换有噪声的像素。但是,如果不存在这样一条线,则用窗口内所有非噪声像素的平均值代替噪声像素。在一组34张图像上的实验结果表明,在噪声强度为10%-90%的情况下,所提出的ABMF在平均SSIM和平均PSNR方面分别比现有算法高出58%和29%。
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