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An LDA Topic Model Adaptation for Context-Based Image Retrieval

机译:用于基于上下文的图像检索的LDA主题模型适配

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In the context-based image retrieval, the textual information surrounding the image plays a central role for ranking returned results. Although this technique outperforms content-based approaches, it may fail when the query keywords does not match the textual content of many documents containing relevant images. In addition, users are usually not experts and provide ambiguous queries that lead to heterogeneous results. To solve these problems, researchers are trying to re-rank primary results using other techniques such as query expansion, concept-based retrieval, etc. In this paper, we propose to use LDA topic model to re-rank results and therefore improve retrieval precision. We apply this model in two levels: global level represented by the whole document containing the image and local level represented by the paragraph containing an image (considered as a specific textual information for the image). Results show a significant improvement over the standard text retrieval approach by re-ranking with the LDA model applied to the local level.
机译:在基于上下文的图像检索中,图像周围的文本信息在对返回结果进行排名中起着核心作用。尽管此技术优于基于内容的方法,但是当查询关键字与包含相关图像的许多文档的文本内容不匹配时,该技术可能会失败。此外,用户通常不是专家,并且会提供模棱两可的查询,从而导致结果异类。为了解决这些问题,研究人员正尝试使用其他技术(例如查询扩展,基于概念的检索等)对主要结果进行重新排名。在本文中,我们建议使用LDA主题模型对结果进行重新排名,从而提高检索精度。我们将此模型应用于两个级别:由包含图像的整个文档表示的全局级别和由包含图像的段落表示的局部级别(被视为该图像的特定文本信息)。结果表明,通过将LDA模型重新应用于本地级别,可以对标准文本检索方法进行重大改进。

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