Social Font Search by Multimodal Feature Embedding

Saemi Choi, Shun Matsumura, K. Aizawa
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Abstract

A typical tag/keyword-based search system retrieves documents where, given a query term q, the query term q occurs in the dataset. However, when applying these systems to a real-world font web community setting, practical challenges arise --- font tags are more subjective than other benchmark datasets, which magnify the tag mismatch problem. To address these challenges, we propose a tag dictionary space leveraged by word embedding, which relates undefined words that have a similar meaning. Even if a query is not defined in the tag dictionary, we can represent it as a vector on the tag dictionary space. The proposed system facilitates multi-modal inputs that can use both textual and image queries. By integrating a visual sentiment concept model that classifies affective concepts as adjective--noun pairs for a given image and uses it as a query, users can interact with the search system in a multi-modal way. We used crowd sourcing to collect user ratings for the retrieved fonts and observed that the retrieved font with the proposed methods obtained a higher score compared to other methods.
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基于多模态特征嵌入的社交字体搜索
典型的基于标记/关键字的搜索系统检索文档,在给定查询词q的情况下,查询词q出现在数据集中。然而,当将这些系统应用于真实的字体web社区设置时,实际的挑战就出现了——字体标签比其他基准数据集更主观,这放大了标签不匹配的问题。为了解决这些挑战,我们提出了一个利用词嵌入的标签字典空间,它将具有相似含义的未定义词联系起来。即使在标记字典中没有定义查询,我们也可以将其表示为标记字典空间中的向量。提出的系统促进多模态输入,可以使用文本和图像查询。通过集成视觉情感概念模型,将给定图像的情感概念分类为形容词-名词对,并将其用作查询,用户可以以多模态方式与搜索系统交互。我们使用众包来收集用户对检索到的字体的评分,并观察到与其他方法相比,使用所提出的方法检索到的字体获得了更高的分数。
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Session details: Vision in Multimedia Domain Specific and Idiom Adaptive Video Summarization Multi-Label Image Classification with Attention Mechanism and Graph Convolutional Networks Session details: Brave New Idea Self-balance Motion and Appearance Model for Multi-object Tracking in UAV
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