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Context-based image re-ranking for content-based image retrieval

机译:基于上下文的图像重新排名基于内容的图像检索

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In the area of content based image retrieval, people always use the image similarity based on the concrete image parameters like color to rank the images. However the ranking criteria based on image similarity directly is not so significant enough because many images in the given large-scale image database have the approximate similarities to a given image. We propose a graph-based mutual reinforcement method which utilize both of the inter- and intra- relationships among the content and context of the images for re-ranking the similar images. After the re-ranking, we could enlarge the relative-ranking-score-difference of the images, so that the search result becomes more significance. On the other hand our method could also improve the quality of the search result on the metrics such as MAP, recall and precision. The experiments based on the images from the social images hosting websites show the efficiency of our method.
机译:在基于内容的图像检索的区域中,人们总是根据具体图像参数使用像颜色的具体图像参数来对图像进行排序。 然而,基于图像相似度的排名标准直接不够重要,因为给定的大规模图像数据库中的许多图像具有与给定图像的近似相似度。 我们提出了一种基于图的相互增强方法,其利用图像的内容和上下文之间的两者和内部关系,以重新排序类似图像。 在重新排名之后,我们可以扩大图像的相对排名差异,从而搜索结果变得更加重要。 另一方面,我们的方法还可以提高搜索结果的质量,例如地图,召回和精度等度量。 基于来自社交形象托管网站的图像的实验显示了我们方法的效率。

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