Image retrieval based on improved hierarchical clustering algorithm

Cai_Yun Zhao, Bian-Xia Shi, Ming-xin Zhang, Zhao-Wei Shang
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引用次数: 2

Abstract

The traditional CBIR is sequential retrieval. However, for large and high-dimension image databases, it is obvious that this retrieval method has been unable to meet efficiency. It is more important that the image database should be preprocessed and establish indexing to improve retrieval efficiency. Focus on the hierarchical clustering algorithm's high computational complexity, this paper introduces ART2 clustering algorithm for image database preprocessing, which reduces the computational complexity, and makes the Algorithm more efficient. In order to avoid the clustering center offset of ART2, K-means algorithm is used to calculate the pattern center, improving the accuracy of clustering. Compared by retrieval efficiency and retrieval result, it is convincingly proved that hierarchical index structure based on clustering is efficient and applicable in CBIR.
基于改进层次聚类算法的图像检索
传统的CBIR是顺序检索。然而,对于大型、高维的图像数据库,这种检索方法显然已经无法满足效率要求。为了提高检索效率,更重要的是对图像数据库进行预处理和建立索引。针对分层聚类算法计算量大的问题,本文引入ART2聚类算法进行图像数据库预处理,降低了算法的计算量,提高了算法的效率。为了避免ART2的聚类中心偏移,采用K-means算法计算模式中心,提高聚类精度。通过对检索效率和检索结果的比较,令人信服地证明了基于聚类的分层索引结构是一种高效的、适用于CBIR的检索方法。
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