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CLUE: cluster-based retrieval of images by unsupervised learning

机译:线索:通过无监督学习对图像进行基于集群的检索

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In a typical content-based image retrieval (CBIR) system, target images (images in the database) are sorted by feature similarities with respect to the query. Similarities among target images are usually ignored. This paper introduces a new technique, cluster-based retrieval of images by unsupervised learning (CLUE), for improving user interaction with image retrieval systems by fully exploiting the similarity information. CLUE retrieves image clusters by applying a graph-theoretic clustering algorithm to a collection of images in the vicinity of the query. Clustering in CLUE is dynamic. In particular, clusters formed depend on which images are retrieved in response to the query. CLUE can be combined with any real-valued symmetric similarity measure (metric or nonmetric). Thus, it may be embedded in many current CBIR systems, including relevance feedback systems. The performance of an experimental image retrieval system using CLUE is evaluated on a database of around 60,000 images from COREL. Empirical results demonstrate improved performance compared with a CBIR system using the same image similarity measure. In addition, results on images returned by Google's Image Search reveal the potential of applying CLUE to real-world image data and integrating CLUE as a part of the interface for keyword-based image retrieval systems.
机译:在典型的基于内容的图像检索(CBIR)系统中,目标图像(数据库中的图像)通过针对查询的特征相似性进行排序。通常忽略目标图像之间的相似性。本文介绍了一种新技术,即通过无监督学习(CLUE)进行基于聚类的图像检索,以通过充分利用相似性信息来改善用户与图像检索系统的交互。 CLUE通过对查询附近的图像集合应用图论聚类算法来检索图像聚类。 CLUE中的群集是动态的。特别地,形成的簇取决于响应于查询而检索到哪些图像。 CLUE可以与任何实值对称相似性度量(度量或非度量)组合。因此,它可以嵌入到许多当前的CBIR系统中,包括相关性反馈系统。在来自COREL的大约60,000张图像的数据库中评估了使用CLUE的实验图像检索系统的性能。实验结果表明,与使用相同图像相似性度量的CBIR系统相比,性能得到了改善。此外,Google图片搜索返回的图片结果显示了将CLUE应用于真实世界的图片数据并将CLUE集成为基于关键字的图片检索系统界面一部分的潜力。

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