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Bridging the semantic gap in content-based image retrieval systems

机译:桥接基于内容的图像检索系统中的语义差距

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Content-based image retrieval (CBIR) is receiving much attention because of the ever growing amount of pictorial content in digital libraries world wide. Much of this content is insufficiently supplied with textual metadata because it is beyond either financial or time bars to generate those data. CBIR systems operate only on the images by extraction of visual primitives like color, texture or shape. However, there is a downside to this approach: It is not possible to extract full semantic information from images alone, a problem known as the semantic gap. This paper introduces an approach that aims at bridging this gap and thereby improving the performance of the system. This is achieved by making use of user feedback to cluster images into different thematic groups. The feedback is used for the global improvement of the system instead of just in the scope of one query. This leads to a system that is continuously learning the semantics of the image base. A prototype has been implemented and an evaluation measuring it against a commercial system has been done. The results show a significant increase both in recall and in precision.
机译:基于内容的图像检索(CBIR)是由于世界范围内数字图书馆中越来越多的图形内容而受到了很多关注。大部分内容都不充分地提供文本元数据,因为它超出了财务或时间栏来生成这些数据。 CBIR Systems仅通过提取颜色,纹理或形状等视觉基元进行操作。然而,这种方法存在缺点:不可能仅从图像中提取完整的语义信息,称为语义间隙的问题。本文介绍了一种旨在弥合这种差距的方法,从而提高了系统的性能。这是通过利用用户反馈将群集图像纳入不同的专题组来实现这一点。反馈用于全球改进系统,而不是在一个查询的范围内。这导致了一个不断学习图像基础语义的系统。已经实施了原型,并已经完成了对商业系统测量的评估。结果表明召回和精确度均显着增加。

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