Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Similarity using Named Entities
نویسندگان
چکیده
In this paper, we attempt to tackle the MediaEval 2012 Search and Hyperlinking challenge, which focuses on video segment retrieval from a large dataset, based on short natural language queries, as well as linking the resulting segments to related ones. Our approach makes use of three semantic similarity metrics, merged by applying late fusion.
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