基于决策的切换中值滤波器用于高密度脉冲噪声损坏图像的恢复

J. Priestley, V. Nandhini, V. Elamaran
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引用次数: 8

摘要

数字图像受到脉冲噪声的破坏主要是由于图像采集设备的传感器故障和不利的信道环境,从而降低了图像质量。提出了一种基于决策的切换中值滤波器(DBSMF)用于恢复高密度脉冲噪声损坏的图像。标准中值滤波器用于从损坏图像中去除脉冲噪声提供了良好的效果,但滤波操作可能会影响精细像素以及噪声像素,从而在过滤后的图像上留下模糊效果。为了解决这一问题,该算法利用一种有效的检测方案来识别噪声像素和无噪声像素。检测算法将损坏图像中的像素聚类,从而将像素分为三个类别,这三个类别表明像素是否损坏或未损坏。所提出的切换中值滤波器只处理那些被分类为损坏的像素,并用中值替换处理像素。在高噪声密度下,滤波窗口由更多的损坏像素组成。针对这种情况,提出的算法对滤波窗口大小的扩展进行了一定的限制,以有效地选择中值。基于决策的算法的性能针对不同水平的噪声密度的四种噪声模型进行了测试,并根据性能指标进行了评估,包括峰值信噪比(PSNR)和图像增强因子(IEF)。对于严重损坏高达90%噪声密度的图像,它提供了更好的结果,并且在处理图像损坏方面优于经典滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A decision based switching median filter for restoration of images corrupted by high density impulse noise
Digital images are corrupted by impulse noise mainly due to sensor faults of image acquisition devices and adverse channel environment which in turn degrades the image quality. A decision based switching median filter (DBSMF) to restore images corrupted with high density impulse noise is proposed in this paper. The global use of standard median filters for impulse noise removal from corrupted images provide good results but the filtering operation may affect fine pixels in addition to noisy pixels which leaves a blurred effect on the filtered image. In order to address this issue the proposed algorithm makes use of an efficient detection scheme to identify the noise pixels and noise free pixels. The detection algorithm clusters the pixels in the corrupted image so as to fall under three categories which states whether the pixels are corrupted or uncorrupted. The proposed switching median filter processes only on those pixels that are classified as corrupted and replaces the processing pixel by the median value. Under high noise densities the filtering window consists of more number of corrupted pixels. For such cases, the proposed algorithm restricts certain conditions on the expansion of the filtering window size to effectively choose the median value. The performance of this decision based algorithm is tested against four noise models for different levels of noise densities and is evaluated in terms of performance metrics which include Peak Signal to Noise ratio (PSNR) and Image Enhancement Factor (IEF). It gives better results for images that are extremely corrupted up to 90% noise density and outperforms classic filters in terms of handling image corruption.
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