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Measuring Semantic Similarity between Concepts in Visual Domain

机译:测量视域概念之间的语义相似性

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Concept similarity has been intensively researched in the natural language processing domain due to its important role in many applications such as language modeling and information retrieval. There are few studies on measuring concept similarity in visual domain, though concept based multimedia information retrieval has attracted a lot of attentions. In this paper, we present a scalable framework for such a purpose, which is different from traditional approaches to exploring correlation among concepts in image/video annotation domain. For each concept, a model based on feature distribution is built using sample images collected from the Internet. And similarity between concepts is measured with the similarity between their models. Hereby, a Gaussian Mixture Model (GMM) is employed to model each concept and two similarity measurements are investigated. Experimental results on 13,974 images of 16 concepts collected through image search engines have demonstrated that the similarity between concepts is very close to human perception. In addition, the entropy of GMM cluster distributions can be a good indication of selecting concepts for image/video annotation.
机译:由于许多应用中的许多应用以及语言建模和信息检索,因此在自然语言处理领域中已经密集地研究了概念相似性。虽然基于概念的多媒体信息检索,但虽然概念的多媒体信息检索已经吸引了很多关注,但仍有很少有研究。在本文中,我们提出了一种可扩展的框架,其目的是与传统方法不同,以探索图像/视频注释域中的概念之间的相关性。对于每个概念,使用从Internet收集的示例图像构建基于特征分布的模型。概念之间的相似性与其模型之间的相似性测量。因此,使用高斯混合模型(GMM)来模拟每个概念,并研究了两个相似度测量。通过图像搜索引擎收集的16个概念图像的实验结果表明,概念之间的相似性非常接近人类感知。此外,GMM群集分布的熵可能是选择图像/视频注释的概念的良好指示。

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