一个将DBpedia集成到多模态本体新闻图像检索系统中的框架

Yanti Idaya Aspura Mohd Khalid, S. Noah
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引用次数: 16

摘要

像Wikipedia这样的知识共享社区和像DBpedia这样的自动提取使得使用实体的关系事实构建机器处理知识库成为可能。这些选项为研究人员提供了一个很好的机会,将其作为图像检索的低级特征和高级概念之间的领域概念。在互联网上,实体附加图像的集合非常丰富,例如带有图像的在线新闻文章。然而,很难检索到关于这些实体的准确信息。在搜索引擎中使用实体名称会产生大量列表,但通常会导致不精确和不令人满意的结果。我们的目标是用BBC体育领域的在线图像新闻资源填充知识库。该系统将产生高精度、高召回率,并包含针对特定实体的各种体育照片。将使用一个多模态本体检索系统来检索结果,该系统具有关于实体的关系事实,用于生成扩展查询。DBpedia将用作领域运动本体描述,并将与文本描述和视觉描述集成,两者都是手工生成的。为了克服本体之间的语义互操作性,使用了自动本体对齐。此外,基于MPEG7描述和SIFT特征的视觉相似性度量在最终排名中被用于更高的多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework for integrating DBpedia in a multi-modality ontology news image retrieval system
Knowledge sharing communities like Wikipedia and automated extraction like DBpedia enable a large construction of machine processing knowledge bases with relational fact of entities. These options give a great opportunity for researcher to use it as a domain concept between low-level features and high-level concepts for image retrieval. The collection of images attached to entities, such as on-line news articles with images, are abundant on the Internet. Still, it is difficult to retrieve accurate information on these entities. Using entity names in a search engine yields large lists, but often results in imprecise and unsatisfactory outcomes. Our goal is to populate a knowledge base with on-line image news resources in the BBC sport domain. This system will yield high precision, a high recall and include diverse sports photos for specific entities. A multi-modality ontology retrieval system, with relational facts about entities for generating expanded queries, will be used to retrieve results. DBpedia will be used as a domain sport ontology description, and will be integrated with a textual description and a visual description, both generated by hand. To overcome semantic interoperability between ontologies, automated ontology alignment is used. In addition, visual similarity measures based on MPEG7 descriptions and SIFT features, are used for higher diversity in the final rankings.
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