基于对数平均亮度的模糊c均值算法聚类蜡染图像

A. Sanmorino
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引用次数: 9

摘要

蜡染是用一种叫做抗蜡染色的特殊染色技术制成的织物或衣服,是具有很高艺术价值的文化遗产之一。为了提高效率和更好地赋予图像语义,一些研究者采用聚类算法在图像被检索之前对其进行管理。图像聚类是根据图像的相似性对图像进行分组的过程。在本文中,我们试图提供一种基于蜡染的对数平均亮度的模糊c均值(FCM)算法分组蜡染图像的替代方法。FCM聚类算法是一种使用模糊模型的算法,它允许所有集群成员的所有数据都具有0到1之间不同的隶属度。对数平均亮度(LAL)是图像中光照的平均值。我们可以比较不同的图像照明从一个图像到另一个使用LAL。通过实验,可以得出模糊c均值算法可以用于蜡染图像的聚类,该算法基于每张图像的对数平均亮度进行聚类。DOI: 10.18495 / comengapp.11.025031
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Batik Images using Fuzzy C-Means Algorithm Based on Log-Average Luminance
Batik is a fabric or clothes that are made ​​with a special staining technique called wax-resist dyeing and is one of the cultural heritage which has high artistic value. In order to improve the efficiency and give better semantic to the image, some researchers apply clustering algorithm for managing images before they can be retrieved. Image clustering is a process of grouping images based on their similarity. In this paper we attempt to provide an alternative method of grouping batik image using fuzzy c-means (FCM) algorithm based on log-average luminance of the batik. FCM clustering algorithm is an algorithm that works using fuzzy models that allow all data from all cluster members are formed with different degrees of membership between 0 and 1. Log-average luminance (LAL) is the average value of the lighting in an image. We can compare different image lighting from one image to another using LAL. From the experiments that have been made, it can be concluded that fuzzy c-means algorithm can be used for batik image clustering based on log-average luminance of each image possessed. DOI: 10.18495/comengapp.11.025031
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