各种改进分割模糊c均值聚类算法在快速色彩还原中的比较

L. Szilágyi, Gellért Dénesi, L. Kovács, S. Szilágyi
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引用次数: 1

摘要

本文比较研究了几种增强版本的模糊c均值聚类算法在基于直方图的图像颜色还原中的应用。在聚类之前进行常见的预处理,包括初步的颜色量化,直方图提取和图像中频繁出现的颜色的选择。这些选择的颜色将通过经过测试的c-means算法聚类。集群之后是另一个常见步骤,即创建输出图像。除了传统的硬聚类(HCM)和模糊c均值聚类(FCM)外,本研究还包括所谓的广义改进分割FCM算法,以及几种常规和广义形式的抑制FCM (s-FCM)。精度是用输入和输出图像像素之间的平均色差来衡量的,而效率主要是用执行颜色还原的总运行时间来表征的。数值评估发现,所有增强的FCM算法都更准确,7种增强算法中有4种比FCM更快。所有经过测试的算法都可以创建质量可接受的彩色图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of various improved-partition fuzzy c-means clustering algorithms in fast color reduction
This paper provides a comparative study of several enhanced versions of the fuzzy c-means clustering algorithm in an application of histogram-based image color reduction. A common preprocessing is performed before clustering, consisting of a preliminary color quantization, histogram extraction and selection of frequently occurring colors of the image. These selected colors will be clustered by tested c-means algorithms. Clustering is followed by another common step, which creates the output image. Besides conventional hard (HCM) and fuzzy c-means (FCM) clustering, the so-called generalized improved partition FCM algorithm, and several versions of the suppressed FCM (s-FCM) in its conventional and generalized form, are included in this study. Accuracy is measured as the average color difference between pixels of the input and output image, while efficiency is mostly characterized by the total runtime of the performed color reduction. Numerical evaluation found all enhanced FCM algorithms more accurate, and four out of seven enhanced algorithms faster than FCM. All tested algorithms can create reduced color images of acceptable quality.
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