一种从数字图像中去除随机脉冲噪声的新方法

G. Tanwar, S. Chaudhuri
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引用次数: 2

摘要

在开关滤波器领域,提出了一种能有效恢复带有脉冲噪声的严重损坏图像的滤波器。它可以处理低密度和高密度的随机值和固定值脉冲噪声。在本研究中,对图像窗口内的局部区域组成进行强度极值分析,将像素分类为有噪或无噪。滤波仅应用于噪声像素,并且以这样一种方式完成,即噪声像素由滤波窗口的中值或平均值取代,这取决于窗口中存在的无噪声像素。窗口大小是自适应的过滤器,并取决于估计的噪声密度。在噪声密度范围从10%到94%的大量灰度和彩色图像上对该滤波器进行了测试,仿真结果表明,在抑制脉冲噪声的同时保留图像细节方面,该滤波器比其他方法具有更好的脉冲噪声去除效果。该滤波器易于实现,适合于实时实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach to remove random-valued impulse noise from digital image
In the field of switching filter, a highly effective filter to restore extremely corrupted image with impulse noise is presented. It is capable of handling low density as well as high density of random valued and fixed valued impulse noise. In this study, local area comprises within the window in an image is analyzed for intensity extrema to classify the pixel as either noisy or noiseless. Filtering is applied to the noisy pixels only and it is done in such a way that the noisy pixel is replaced by either the median or the mean value of the filtering window depending on the noiseless pixels present in the window. The window size is adaptive for this filter and depends on the estimated noise density. The proposed filter is tested on a large number of grayscale and color images under a wide range of noise density (from 10% to 94%) and the simulation results reveal that it performs better than other approaches to impulse noise removal, in terms of suppressing impulse noise while preserving image details. The proposed filter is simple to implement and suitable for real time implementation.
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