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Context-Based Image Semantic Similarity for Prosthetic Knowledge

机译:修复知识的基于上下文的图像语义相似度

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Textual information is concept-based information which is used for image representation, like captions, tags or comments. It can convey more concept-related meaning than low-level features. In this work, we will analyze the text connected to images (metadata, comments, tags, etc.) to extract a set of concepts, which can characterize the semantic context of the given image. We propose a context-based image similarity scheme for prosthetic knowledge by evaluating image similarity using the associated groups of concepts. The evaluation can be used in combination with different measures such as WordNet, Wikipedia, and other basic distance metrics to build the group distance comparison. Among semantic measures, web-based proximity measures (e.g. MC, Jaccard, Dice), which exploit statistical data provided by search engines, are particularly effective for similarity evaluation between concepts. Experiments are conducted on tagged images from Flickr repository. The results show that the proposed approach is adequate to measure the image concept similarity and the relationships among images with respect to human evaluation. The proposed methodology is able to reflect the collective notion of semantic similarity.
机译:文本信息是基于概念的信息,用于图像表示,例如标题,标签或注释。与低级功能相比,它可以传达更多与概念相关的含义。在这项工作中,我们将分析与图像有关的文本(元数据,注释,标签等),以提取出一组概念,这些概念可以表征给定图像的语义上下文。我们通过使用相关的概念组评估图像相似性,提出了一种基于上下文的假肢知识图像相似性方案。可以将评估与WordNet,Wikipedia和其他基本距离度量等不同度量结合使用,以建立组距离比较。在语义测度中,利用由搜索引擎提供的统计数据的基于Web的邻近测度(例如MC,Jaccard,Dice)对于概念之间的相似性评估特别有效。实验来自Flickr存储库中的带标签图像。结果表明,所提出的方法足以测量图像概念的相似性以及图像之间相对于人类评价的关系。所提出的方法能够反映语义相似性的集体概念。

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