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Using Relevance Feedback in Bridging Semantic Gaps in Content-based Image Retrieval

机译:在基于内容的图像检索中使用相关反馈在桥接语义间隙中

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Content-based image retrieval (CBIR) is a difficult area of research in multimedia systems. The research has proved extremely difficult because of the inherent problems in proper automated analysis and feature extraction of the image to facilitate proper classification of various objects. An image may contain more than one objects and to segment the image in line with object features to extract meaningful objects and then classify it in high-level like table, chair, car and so on has become a challenge to the researchers in the field. The latter part of the problem, the gap between low-level features like color, shape, texture, spatial relationships and high-level definitions of the images is called the semantic gap. Until we solve these problems in an effective way, the efficient processing and retrieval of information from images will be difficult to achieve. In this paper we explore the possibilities of how relevance feedback can help us solve this problem of semantic gap although lot of works have already been done using the concepts of relevance feedback in this area. This would enable efficient image retrieval for internet of the future.
机译:基于内容的图像检索(CBIR)是多媒体系统研究的一个困难的领域。研究已证明非常困难的,因为在适当的自动分析和图像的特征提取的固有问题,以方便各种对象的正确分类。图像可以包含多个对象和分割与对象行的图像特征提取有意义的对象,然后在高层次的像桌子,椅子,汽车把它归类等已经成为该领域的研究人员提出了挑战。问题的后半部分,低电平之间的间隙特性,如颜色,形状,纹理,空间关系和图像的高级别定义被称为语义差距。直到我们解决的有效途径这些问题,高效的处理和从图像信息检索将难以实现。在本文中,我们探讨的相关反馈如何帮助虽然很多作品已经被使用在这一领域的相关反馈的概念做了我们解决的语义鸿沟这一问题的可能性。这将使未来的互联网高效的图像检索。

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