Semantic Multimedia Retrieval using Lexical Query Expansion and Model-Based Reranking

A. Haubold, A. Natsev, M. Naphade
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引用次数: 45

Abstract

We present methods for improving text search retrieval of visual multimedia content by applying a set of visual models of semantic concepts from a lexicon of concepts deemed relevant for the collection. Text search is performed via queries of words or fully qualified sentences, and results are returned in the form of ranked video clips. Our approach involves a query expansion stage, in which query terms are compared to the visual concepts for which we independently build classifier models. We leverage a synonym dictionary and WordNet similarities during expansion. Results over each query are aggregated across the expanded terms and ranked. We validate our approach on the TRECVID 2005 broadcast news data with 39 concepts specifically designed for this genre of video. We observe that concept models improve search results by nearly 50% after model-based re-ranking of text-only search. We also observe that purely model-based retrieval significantly outperforms text-based retrieval on non-named entity queries
基于词法查询扩展和模型重排序的语义多媒体检索
我们提出了改进视觉多媒体内容的文本搜索检索的方法,通过应用一组语义概念的视觉模型,这些模型来自被认为与集合相关的概念词典。文本搜索通过查询单词或完全限定的句子来执行,结果以排名视频片段的形式返回。我们的方法涉及一个查询扩展阶段,在这个阶段,查询项与我们独立构建分类器模型的视觉概念进行比较。在扩展过程中,我们利用同义词字典和WordNet相似性。每个查询的结果都跨扩展的术语聚合并排序。我们用39个专门为这类视频设计的概念在TRECVID 2005广播新闻数据上验证了我们的方法。我们观察到,在对纯文本搜索进行基于模型的重新排序后,概念模型将搜索结果提高了近50%。我们还观察到,在非命名实体查询上,纯粹基于模型的检索明显优于基于文本的检索
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