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Comparing Dissimilarity Measures for Content-Based Image Retrieval

机译:比较基于内容的图像检索的相异性度量

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Dissimilarity measurement plays a crucial role in content-based image retrieval, where data objects and queries are represented as vectors in high-dimensional content feature spaces. Given the large number of dissimilarity measures that exist in many fields, a crucial research question arises: Is there a dependency, if yes, what is the dependency, of a dissimilarity measure's retrieval performance, on different feature spaces? In this paper, we summarize fourteen core dissimilarity measures and classify them into three categories. A systematic performance comparison is carried out to test the effectiveness of these dissimilarity measures with six different feature spaces and some of their combinations on the Corel image collection. From our experimental results, we have drawn a number of observations and insights on dissimilarity measurement in content-based image retrieval, which will lay a foundation for developing more effective image search technologies.
机译:差异度测量在基于内容的图像检索中起着至关重要的作用,在该图像检索中,数据对象和查询被表示为高维内容特征空间中的向量。鉴于许多领域中存在大量的相异性度量,因此出现了一个关键的研究问题:如果是的话,相异性度量对不同特征空间的检索性能是否具有依赖性?在本文中,我们总结了十四种核心差异性度量,并将它们分为三类。进行了系统的性能比较,以测试具有六个不同特征空间以及它们在Corel图像集合中的某些组合的这些相异性度量的有效性。从我们的实验结果中,我们就基于内容的图像检索中的相异性测量得出了许多观察和见解,这将为开发更有效的图像搜索技术奠定基础。

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