A clustering based approach to efficient image retrieval

Ruofei Zhang, Zhongfei Zhang
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引用次数: 65

Abstract

This paper addresses the issue of effective and efficient content based image retrieval by presenting a novel indexing and retrieval methodology that integrates color, texture, and shape information for the indexing and retrieval, and applies these features in regions obtained through unsupervised segmentation, as opposed to applying them to the whole image domain. In order to address the typical color feature "inaccuracy" problem in the literature, fuzzy logic is applied to the traditional color histogram to solve for the problem to a certain degree. The similarity is defined through a balanced combination between global and regional similarity measures incorporating all the features. In order to further improve the retrieval efficiency, a secondary clustering technique is developed and employed to significantly save query processing time without compromising the retrieval precision. An implemented prototype system has demonstrated a promising retrieval performance for a test database containing 2000 general-purpose color images, as compared with its peer systems in the literature.
基于聚类的高效图像检索方法
本文通过提出一种新的索引和检索方法来解决有效和高效的基于内容的图像检索问题,该方法集成了用于索引和检索的颜色,纹理和形状信息,并将这些特征应用于通过无监督分割获得的区域,而不是将它们应用于整个图像域。为了解决文献中典型的颜色特征“不准确”问题,将模糊逻辑应用到传统的颜色直方图中,在一定程度上解决了这一问题。相似性是通过结合所有特征的全球和区域相似性度量之间的平衡组合来定义的。为了进一步提高检索效率,提出了一种二次聚类技术,在不影响检索精度的前提下,大大节省了查询处理时间。与文献中的同类系统相比,已实现的原型系统在包含2000个通用彩色图像的测试数据库中表现出了良好的检索性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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