网络上搜索古阿拉伯文献的神经重排序方法

T. Sari, Chaouki Chemam
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引用次数: 0

摘要

网络用户希望快速准确地访问图像。搜索引擎目前使用的方法是分析图像周围的文本,这通常会导致错误。由于图像的内容与文字描述之间存在着巨大的差距。因此,实现一个考虑到网络图像内容的搜索引擎就变得势在必行。在本文中,我们提出了一种从网络中收集旧阿拉伯语文档图像的方法。本工作主要关注基于内容的图像检索,通过纹理特征使用神经网络进行分类,并尝试将用户整合到搜索循环中。该系统从生成查询文本开始,将查询文本展开后发送给传统的搜索引擎。然后,通过神经网络对得到的结果进行过滤,最后显示给用户,供用户同意。对不同查询文本的实验显示了良好的性能,并收集了数百份古老的阿拉伯语文档。
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A neural re-ranking method for searching ancient Arabic documents on the Web
Web users want a quick and accurate access to images. The method currently used by search engines is the analysis of text surrounding an image which usually causes errors. Since there is a huge gap between the content of the image and the textual description associated. Hence, realizing a search engine for images in the web considering their contents became therefore mandatory. In this paper, we propose a method for collecting images of old Arabic documents from the Web. This work focuses mainly on content based image retrieval by texture feature using a neural network for classification and trying to integrate the user in the search loop. The system begins with the formulation of a query text, which is expanded and sent to a conventional search engine. Then, the obtained results are filtered by a neural network and finally displayed to the user for agreement. The experiments with various query texts shown good performances and hundreds of old Arabic documents were collected.
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