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Knowledge based query expansion in complex multimedia event detection

机译:复杂多媒体事件检测中基于知识的查询扩展

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摘要

A common approach in content based video information retrieval is to perform automatic shot annotation with semantic labels using pre-trained classifiers. The visual vocabulary of state-of-the-art automatic annotation systems is limited to a few thousand concepts, which creates a semantic gap between the semantic labels and the natural language query. One of the methods to bridge this semantic gap is to expand the original user query using knowledge bases. Both common knowledge bases such as Wikipedia and expert knowledge bases such as a manually created ontology can be used to bridge the semantic gap. Expert knowledge bases have highest performance, but are only available in closed domains. Only in closed domains all necessary information, including structure and disambiguation, can be made available in a knowledge base. Common knowledge bases are often used in open domain, because it covers a lot of general information. In this research, query expansion using common knowledge bases ConceptNet and Wikipedia is compared to an expert description of the topic applied to content-based information retrieval of complex events. We run experiments on the Test Set of TRECVID MED 2014. Results show that 1) Query Expansion can improve performance compared to using no query expansion in the case that the main noun of the query could not be matched to a concept detector; 2) Query expansion using expert knowledge is not necessarily better than query expansion using common knowledge; 3) ConceptNet performs slightly better than Wikipedia; 4) Late fusion can slightly improve performance. To conclude, query expansion has potential in complex event detection.
机译:基于内容的视频信息检索中的一种常见方法是使用预训练的分类器执行带有语义标签的自动镜头注释。最新的自动注释系统的视觉词汇仅限于数千个概念,这在语义标签和自然语言查询之间造成了语义鸿沟。弥合这种语义鸿沟的方法之一是使用知识库扩展原始用户查询。诸如Wikipedia之类的常见知识库和诸如手动创建的本体之类的专家知识库均可用于弥合语义鸿沟。专家知识库具有最高的性能,但仅在封闭域中可用。只有在封闭域中,才能在知识库中提供所有必要的信息,包括结构和歧义消除。通用知识库经常在开放域中使用,因为它涵盖了许多常规信息。在这项研究中,将使用通用知识库ConceptNet和Wikipedia进行的查询扩展与该主题的专家描述进行了比较,该主题应用于基于事件的基于内容的复杂事件的信息检索中。我们在TRECVID MED 2014的测试集上进行了实验。结果表明:1)在查询的主要名词与概念检测器不匹配的情况下,与不使用查询扩展相比,查询扩展可以提高性能; 2)使用专家知识进行查询扩展不一定优于使用常识进行查询扩展; 3)ConceptNet的性能比Wikipedia略好; 4)后期融合可以稍微改善性能。总而言之,查询扩展在复杂事件检测中具有潜力。

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