基于大数据集聚类技术的基于内容的图像检索系统综述

Monika Jain, Dr. S. K. Singh
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引用次数: 66

摘要

基于内容的图像检索(CBIR)是一种广泛采用的从大量无注释的图像数据库中检索图像的新方法。随着网络和多媒体技术的日益普及,用户对传统的信息检索技术已经不满意。因此,基于内容的图像检索(CBIR)正在成为准确、快速检索的一个重要途径。近年来,人们开发了各种技术来提高cir的性能。数据聚类是一种从海量数据集中提取隐藏模式的无监督方法。对于大型数据集,存在高维的可能性。对于具有大量样本的高维数据集来说,同时保持准确性和效率是一个具有挑战性的领域。本文对聚类技术进行了讨论和分析。此外,我们还提出了一种使用多种聚类技术来提高CBIR性能的方法HDK。该方法利用分层和分而治之的K-Means聚类技术,结合等价和兼容关系的概念,提高了K-Means在高维数据集上的性能。并引入了颜色、纹理、形状等特征,使检索系统更加准确有效。
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A Survey On: Content Based Image Retrieval Systems Using Clustering Techniques For Large Data sets
Content-based image retrieval (CBIR) is a new but widely adopted method for finding images from vast and unannotated image databases. As the network and development of multimedia technologies are becoming more popular, users are not satisfied with the traditional information retrieval techniques. So nowadays the content based image retrieval (CBIR) are becoming a source of exact and fast retrieval. In recent years, a variety of techniques have been developed to improve the performance of CBIR. Data clustering is an unsupervised method for extraction hidden pattern from huge data sets. With large data sets, there is possibility of high dimensionality. Having both accuracy and efficiency for high dimensional data sets with enormous number of samples is a challenging arena. In this paper the clustering techniques are discussed and analysed. Also, we propose a method HDK that uses more than one clustering technique to improve the performance of CBIR.This method makes use of hierachical and divide and conquer KMeans clustering technique with equivalency and compatible relation concepts to improve the performance of the K-Means for using in high dimensional datasets. It also introduced the feature like color, texture and shape for accurate and effective retrieval system.
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