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Pengelompokan Gambar Berdasarkan Fitur Warna Dan Tekstur Menggunakan FGKA Clustering (Fast Genetics K-Means Algorithm) Untuk Pencocokan Gambar

机译:基于颜色和纹理特征的图像分组使用FGKa聚类(快速遗传K均值算法)进行图像匹配

摘要

A large collections of digital images are being created. Usually, the only way of searching these collections was by using meta data (like caption or keywords). This way is not effective, impractical, need a big size of database and giving inaccurate result. Recently, it has been developed many ways in image retrieval that use image content (color, shape, and texture) that more recognised with CBIR ( Content Based Images Retrieval). The use of centroid produced from clustered HSV Histogram and Gabor Filter using FGKA, can be used for searching parameter. FGKA is merger of Genetic Algorithm and Kmeans Clustering Algorithm. FGKA is always converge to global optimum. Image Clustering and Matching based on color-texture feature are better than based on color feature only, texture only or using non-clustering method. Keywords: Genetics Algorithm, K-Means Clustering, CBIR, HSV Histogram, Gabor Filter.
机译:正在创建大量的数字图像。通常,搜索这些集合的唯一方法是使用元数据(例如标题或关键字)。这种方式是无效的,不切实际的,需要较大的数据库大小并给出不正确的结果。近来,已经在图像检索中开发了许多方法,这些方法使用通过CBIR(基于内容的图像检索)可以更好地识别的图像内容(颜色,形状和纹理)。使用聚类的HSV直方图和使用FGKA的Gabor滤波器产生的质心,可以用于搜索参数。 FGKA是遗传算法和Kmeans聚类算法的合并。 FGKA始终收敛于全局最优。基于颜色纹理特征的图像聚类和匹配优于仅基于颜色特征,仅纹理或使用非聚类方法。关键字:遗传算法,K均值聚类,CBIR,HSV直方图,Gabor滤波器。

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