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Improving Text-Based Image Search with Textual and Visual Features Combination

机译:使用文本和可视化功能组合改进基于文本的图像搜索

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With the huge number of available images on the web, an effective image retrieval system has been more and more needed. Improving the performance is one of crucial tasks in modern text-based image retrieval systems such as Google Image Search, Frickr, etc. In this paper, we propose a unified framework to cluster and re-rank returned images with respect to an input query. However, owning to a difference to previous methods of using only either textual or visual features of an image, we combine the textual and visual features to improve search performance. The experimental results show that our proposed model can significantly improve the performance of a text-based image search system (i.e. Flickr). Moreover, the performance of the system with the combination of textual and visual features outperforms the performance of both the textual-based system and the visual-based system.
机译:通过Web上的大量可用图像,越来越需要有效的图像检索系统。 提高性能是现代基于文本的图像检索系统中的重要任务之一,例如Google Image搜索,Frickr等。在本文中,我们向群集提出了一个统一的框架,并相对于输入查询重新排名返回的图像。 然而,拥有对以前的方法的差异仅使用图像的文本或视觉功能,我们组合了文本和可视功能以提高搜索性能。 实验结果表明,我们提出的模型可以显着提高基于文本的图像搜索系统(即Flickr)的性能。 此外,系统的性能与文本和视觉功能的组合优于基于文本的系统和基于视觉系统的性能。

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