Image edge detection using objective function and fuzzy C means

O. Heriana, A. N. Rahman, M. T. Miftahushudur
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引用次数: 1

Abstract

Images contain information based on their color intensity. By observing the degree of color intensity difference between two pixels or more, it can be determined an edge of image. The problem encountered is that if the color intensity difference between the pixels that is assumed as an edge is not significant, so the edge determination of image becomes unclear. An objective function can be used for calculating the magnitude of 4 direction values (horizontal, vertical, and 2 diagonals) of a pixel in the image. The result of this calculation can be used as feature of image texture. By analyzing the characteristics of image texture features, they can be grouped to determine whether the pixels are included in the category of background, edge, or noise. In this research, the image texture features clustering are done by implementing Fuzzy C Means algorithm based on the data distribution of mean and standard deviation values of each 4 magnitude direction values of a pixel which have been calculated based on the objective function. The value of the cluster centers obtained from the data clustering is further ranked to know their differences. Based on analysis, this method can distinguish 3 image texture features clearly (background, edge, noise). Therefore it can be concluded that cluster center grouping with the largest mean value can be used to form an edge of the image.
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利用目标函数和模糊C均值进行图像边缘检测
图像包含基于其颜色强度的信息。通过观察两个或多个像素之间的色彩强度差的程度,可以确定图像的边缘。遇到的问题是,如果假设作为边缘的像素之间的颜色强度差不显著,那么图像的边缘确定就会变得不清楚。目标函数可用于计算图像中像素的4个方向值(水平、垂直和2条对角线)的大小。计算结果可以作为图像纹理的特征。通过分析图像纹理特征的特征,可以对其进行分组,以确定像素是否包含在背景、边缘或噪声类别中。在本研究中,基于目标函数计算出的像素每4个量级方向值的均值和标准差值的数据分布,实现模糊C Means算法对图像纹理特征进行聚类。对数据聚类得到的聚类中心值进行进一步排序,了解它们之间的差异。经过分析,该方法可以清晰地分辨出3种图像纹理特征(背景、边缘、噪声)。因此可以得出结论,可以使用均值最大的聚类中心分组来形成图像的边缘。
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