On the use of statistical semantics for metadata-based social image retrieval

Content-Based Multimedia Indexing(2015)

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摘要
We revisit text-based image retrieval for social media, exploring the opportunities offered by statistical semantics. We assess the performance and limitation of several complementary corpus-based semantic text similarity methods in combination with word representations. We compare results with state-of-the-art text search engines. Our deep learning-based semantic retrieval methods show a statistically significant improvement in comparison to a best practice Solr search engine, at the expense of a significant increase in processing time. We provide a solution for reducing the semantic processing time up to 48% compared to the standard approach, while achieving the same performance.
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关键词
image retrieval,learning (artificial intelligence),social networking (online),statistical analysis,text analysis,Solr search engine,corpus-based semantic text similarity methods,deep learning-based semantic retrieval methods,metadata-based social image retrieval,social media,statistical semantics,text-based image retrieval,word representations
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