A semantic relatedness-based solution for reducing missing problem in TBIR

Farah Debbagh, M. L. Kherfi, M. C. Babahenini
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引用次数: 1

Abstract

In text-based image retrieval, matching is a technique that retrieves for a concept query Q, images annotated with Q. The result performance is very influenced by the annotation quality. Since it is difficult to have a well-annotated data set, the retrieval neglects many relevant images simply because they are not annotated with the query concept (i.e. missing problem). In this paper, we propose a solution that considerably minimises such a problem, by integrating the semantic relatedness between concepts into the retrieval. We compute the semantic relatedness between pairs of concepts from Wikipedia articles. We use term frequency - inverse collection term frequency weighting scheme and the cosine similarity. After evaluating the obtained values, using the human judgement benchmark WordSimilarity-353, we incorporated them into image retrieval task. The experimental results on Corel 5K data set clearly show the ability of the proposed method in detecting missing images, compared with matching and some literature works.
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一种减少tir中缺失问题的基于语义关联的解决方案
在基于文本的图像检索中,匹配是一种检索概念查询Q、用Q注释的图像的技术。结果性能受注释质量的影响很大。由于很难有一个注释良好的数据集,检索忽略了许多相关的图像,因为它们没有用查询概念进行注释(即缺失问题)。在本文中,我们提出了一种解决方案,通过将概念之间的语义相关性集成到检索中,大大减少了这样的问题。我们计算维基百科文章中概念对之间的语义相关性。我们使用项频率-反集合项频率加权方案和余弦相似度。在评估了获得的值后,使用人类判断基准WordSimilarity-353,我们将它们纳入图像检索任务。与匹配和一些文献工作相比,在Corel 5K数据集上的实验结果清楚地表明了该方法在检测缺失图像方面的能力。
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