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Facilitating Image and Document Retrieval Using Image Content and Querying Keyword

机译:使用图像内容和查询关键字促进图像和文档检索

摘要

Evolution of ubiquitous computing in the areas of personal computing technology has produced staggeringly large data It is difficult to search mainly the image data by understanding users objective only by keywords and phrases and this leads to uncertain outcomes. For producing these outcomes effectively, this paper introduces a new approach to the problem of image learning to enable search engines to learn about visual content over time based on user feedback through one click activity and images from a pool recovered by text based query are re-ranked depending on both visual and text based query. Content Based Image Retrieval (CBIR) techniques are used for accessing semantically-relevant images from an image data source depending on automatically-derived image functions for features like Geometric moments, Global histogram, Color Moments, Local histogram. Documents can also be retrieved using the text based query by the user.
机译:在个人计算技术领域中,无处不在的计算的发展产生了惊人的大数据。仅通过仅通过关键字和短语来理解用户的目标就很难主要搜索图像数据,这导致不确定的结果。为了有效地产生这些结果,本文介绍了一种解决图像学习问题的新方法,以使搜索引擎可以通过一次单击活动基于用户的反馈,随着时间的推移了解视觉内容,并且可以重新检索基于文本的查询从池中获取的图像根据基于视觉和文本的查询进行排名。基于内容的图像检索(CBIR)技术用于根据自动导出的图像功能(例如几何矩,全局直方图,颜色矩,局部直方图)从图像数据源访问语义相关的图像。用户还可以使用基于文本的查询来检索文档。

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