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A Cross-Modal Approach for Extracting Semantic Relationships Between Concepts Using Tagged Images

机译:使用标记图像提取概念之间语义关系的跨模态方法

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摘要

This paper presents a cross-modal approach for extracting semantic relationships between concepts using tagged images. In the proposed method, we first project both text and visual features of the tagged images to a latent space using canonical correlation analysis (CCA). Then, under the probabilistic interpretation of CCA, we calculate a representative distribution of the latent variables for each concept. Based on the representative distributions of the concepts, we derive two types of measures: the semantic relatedness between the concepts and the abstraction level of each concept. Because these measures are derived from a cross-modal scheme that enables the collaborative use of both text and visual features, the semantic relationships can successfully reflect semantic and visual contexts. Experiments conducted on tagged images collected from Flickr show that our measures are more coherent to human cognition than the conventional measures that use either text or visual features, or the WordNet-based measures. In particular, a new measure of semantic relatedness, which satisfies the triangle inequality, obtains the best results among different distance measures in our framework. The applicability of our measures to multimedia-related tasks such as concept clustering, image annotation and tag recommendation is also shown in the experiments.
机译:本文提出了一种跨模式方法,用于使用标记图像提取概念之间的语义关系。在提出的方法中,我们首先使用规范相关分析(CCA)将标记图像的文本和视觉特征都投影到潜在空间。然后,在CCA的概率解释下,我们为每个概念计算潜在变量的代表性分布。基于概念的代表性分布,我们得出两种类型的度量:概念之间的语义相关性和每个概念的抽象级别。由于这些措施是从跨模式方案派生而来的,因此可以协同使用文本和视觉功能,因此语义关系可以成功反映语义和视觉上下文。对从Flickr收集的带标签图像进行的实验表明,与使用文本或视觉功能或基于WordNet的常规措施相比,我们的措施在人类认知方面更加一致。特别是,满足三角不等式的一种新的语义相关性度量在我们的框架中的不同距离度量中获得了最佳结果。实验还显示了我们的措施对与多媒体相关的任务(如概念聚类,图像注释和标签推荐)的适用性。

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