Investigation of the mechanism for median image filtering in computer systems and special purpose networks

О.О. Тимочко, В.В. Ларін
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Abstract

A successful solution to solve an impulse noise is to use median filtration proposed by John Tuke in 1971 for the analysis of economic processes. It should be noticed that median filtration is a heuristic processing method, its algorithm is not a mathematical solution to a strictly formulated problem. Therefore, the researchers pay much attention to the analysis of the image effectiveness processing on its basis and comparison with other methods. When applying a median filter, each image pixel is sequentially processed. For median filtration, a two-dimensional window (filter aperture) is used, usually has a central symmetry, with its center located at the current filtration point. The dimensions of the aperture are among the parameters that are optimized in the process of analyzing the algorithm efficiency. Image pixels, that appear within the window, form a working sample of the current step. However median filtering smoothens the image borders to a lesser degree than any linear filtering. The mechanism of this phenomenon is very simple and is as follows. Assume that the filter aperture is near the boundary separating the light and image's dark areas, with its center located in the dark area. Then, most likely, the work sample will contain more elements with small brightness values, and, consequently, the median will be among those elements of the work sample that match this area of the image. The situation changes to the opposite, if the aperture center is shifted to the region of higher brightness. But this means the presence of sensitivity in the median filter to brightness variations.
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计算机系统和专用网络中值图像滤波机制的研究
解决脉冲噪声的一个成功解决方案是使用John Tuke在1971年提出的中值滤波来分析经济过程。需要注意的是,中值过滤是一种启发式处理方法,其算法并不是严格公式化问题的数学解。因此,研究人员非常重视在其基础上对图像有效性处理进行分析,并与其他方法进行比较。当应用中值滤波器时,对每个图像像素进行顺序处理。中值滤波采用二维窗口(滤光孔),通常具有中心对称,其中心位于当前滤光点。在分析算法效率的过程中,孔径尺寸是优化的参数之一。出现在窗口内的图像像素构成了当前步骤的工作样本。然而,中值滤波平滑图像边界的程度低于任何线性滤波。这种现象的机理非常简单,如下所述。假设滤光片孔径位于图像明暗区边界附近,其中心位于暗区。然后,最有可能的是,工作样本将包含更多具有小亮度值的元素,因此,中位数将是工作样本中与图像该区域匹配的元素之一。如果将光圈中心移到亮度较高的区域,则情况正好相反。但这意味着中值滤波器对亮度变化的敏感性。
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