High Density Fixed Valued Impulse Noise Removal Using Improved Decision Based Hybrid Median Filter and its Application on Medical Images

L. K. Baghel, R. K. Sunkaria
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引用次数: 4

Abstract

Formation of image is affected by image capturing device characteristics and intensity of light. Therefore inferior quality of image capturing device and inadequate lighting conceals particulars and significant details associated with image. In order to squeeze out the hidden features, image enhancement (noise removal) is mandatory. Hence noise removal is realized as pre-processing step in image study. In this research paper a Decision Based Hybrid Median Filter is suggested for the renovation of gray scale images corrupted by fixed valued Impulse noise. This suggested filtering technique offers superior results than the earlier known enhancement techniques like standard median filter (MF), adaptive median filter (AMF), fast and efficient median filter (FEMF), new adaptive weighted mean filter (AWMF), noise adaptive fuzzy switching median filter (NAFSMF). The foremost objective of the suggested technique is to enhance visual perception and boost peak signal to noise ratio (PSNR). In the suggested technique if current pixel is found noisy then it is substituted by median value achieved after eliminating pixels with intensity values 0 and 255 from the window. When all the pixels in the window are 0 and 255 then the window size is increased. If 80 to 90% pixels are 0 and 255 in the new window, then substitute the pixel with the previously processed pixel value else substitute it with mean of the designated window. The suggested technique is verified against standard as well as medical images. Comparisons and experimental results shows better visual and quantitative results with reduced mean square error (MSE), increased image enhancement factor (IEF) and peak signal to noise ratio (PSNR).
基于改进决策的混合中值滤波高密度定值脉冲噪声去除及其在医学图像中的应用
图像的形成受图像捕获器件特性和光强的影响。因此,劣质的图像捕捉设备和不足的照明掩盖了与图像相关的细节和重要细节。为了挤出隐藏的特征,图像增强(去噪)是必须的。因此,将去噪作为图像研究的预处理步骤来实现。本文提出了一种基于决策的混合中值滤波器,用于灰度图像中固定值脉冲噪声的修复。该滤波技术比先前已知的增强技术如标准中值滤波器(MF)、自适应中值滤波器(AMF)、快速高效中值滤波器(FEMF)、新型自适应加权平均滤波器(AWMF)、噪声自适应模糊切换中值滤波器(NAFSMF)具有更好的效果。该技术的首要目标是增强视觉感知和提高峰值信噪比(PSNR)。在建议的技术中,如果发现当前像素有噪声,则将其替换为从窗口中消除强度值为0和255的像素后获得的中值。当窗口中的所有像素分别为0和255时,窗口大小增加。如果在新窗口中有80%到90%的像素为0和255,则将该像素替换为先前处理的像素值,否则将其替换为指定窗口的平均值。根据标准图像和医学图像验证了所建议的技术。对比和实验结果表明,在减小均方误差(MSE)、提高图像增强因子(IEF)和峰值信噪比(PSNR)的情况下,视觉效果和定量结果都较好。
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