Clustering of Invariance Improved Legendre Moment Descriptor for Content Based Image Retrieval

Dinesh Kumar, T. Thomas
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引用次数: 10

Abstract

This paper reports a k-Means clustering based technique for content based image retrieval (CBIR) using improved Legendre moment descriptor (ILMD). The ILMD is based on orthogonal Legendre moment polynomial and preprocessing steps required for invariance improvement of ILMD is discussed. A comparative study of the clustering accuracy of ILMD with popular Zernike moment descriptor (ZMD) and angular radial transformation descriptor (ARTD) is carried out The clustering accuracy of both contour shape description and region shape description were investigated. The shape databases used for evaluation were MPEG-7 approved CE-1 set B contour shape database and CE-2 set A1 region shape database. The k-Means clustering of the shape descriptors shows better accuracy for ILMD than ARTD and for ARTD than ZMD for both region and contour shape descriptor.
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基于内容的图像检索中改进的不变性聚类Legendre矩描述子
本文报道了一种基于k均值聚类的基于内容的图像检索(CBIR)技术,该技术使用改进的Legendre矩描述子(ILMD)。基于正交勒让德矩多项式的ILMD,讨论了改善ILMD不变性所需的预处理步骤。比较了常用的泽尼克矩描述子(ZMD)和角径向变换描述子(ARTD)的聚类精度,研究了轮廓形状描述和区域形状描述的聚类精度。用于评价的形状数据库为MPEG-7批准的CE-1 B组轮廓形状数据库和CE-2 A1组区域形状数据库。形状描述子的k-Means聚类结果表明,对于区域和轮廓形状描述子,ILMD的精度优于ARTD, ARTD的精度优于ZMD。
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