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Automatic Feature Subset Selection for Clustering Images using Differential Evolution

机译:使用差分进化对图像进行聚类的自动特征子集选择

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摘要

Storing and organizing huge collection of image databases is a challenge for many applications. Such huge collection of images can be organized efficiently using image content clustering. Image Clustering is mapping of images into classes according to their similarity without any prior knowledge. Clustering of images into groups can improve the efficiency of searching images in the database for various web applications. Image content characterization greatly influences the result of clustering. This paper addresses the problem of characterizing and clustering a set of images using Differential Evolution. This work proposes a new algorithm, Automatic Feature Subset Selection for Clustering Images using Differential Evolution (AFSCIDE), to characterize the images with proper selection of textural features by feature subset selection and find groups with clustering using Differential Evolution. Experiments are conducted on various benchmark datasets CUReT, UIUC.
机译:对于许多应用程序而言,存储和组织大量的图像数据库是一项挑战。使用图像内容聚类可以有效地组织如此大量的图像。图像聚类是根据图像的相似度将图像映射到类,而无需任何先验知识。将图像聚类成组可以提高在数据库中搜索各种Web应用程序的图像的效率。图像内容的表征极大地影响了聚类的结果。本文解决了使用差分进化来表征和聚类一组图像的问题。这项工作提出了一种新算法,即使用差分进化算法对图像进行聚类的自动特征子集选择(AFSCIDE),以通过特征子集选择正确选择纹理特征来表征图像,并使用差分进化法对聚类进行分组查找。在各种基准数据集CUReT,UIUC上进行了实验。

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