Cluster classification characteristics of the critical principal image histogram component

B. Homnan, W. Benjapolakul
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引用次数: 1

Abstract

There are a lot of limit image histogram components in any image. This paper selects the principal image histogram components and evaluates them to get the critical one. As the central value of the image the critical principal image histogram component hold clusters and their distributions in the image. On the concept of the pixel distance, determinate mathematical model of probability and cumulative density functions categorize image subclusters and their member details with the threshold of the difference and the threshold of the number of pixels, within the image coverage of the critical principal image histogram component.
聚类分类特征的关键主图像直方图分量
在任何图像中都有很多限制图像直方图分量。选取图像直方图的主分量,对其进行评价,得到关键分量。关键主图像直方图分量作为图像的中心值,保存着图像中的聚类及其分布。在像素距离的概念上,确定概率和累积密度函数的数学模型,在关键主直方图分量的图像覆盖范围内,以差值阈值和像素数阈值对图像子簇及其成员细节进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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