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Attribute based image retrieval and hypergraph learning based image search reranking

机译:基于属性的图像检索和超图基于超图的图像搜索重新登录

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Image search re-ranking is a powerful method to enhanced result we get from text-based search. We get noisy data from text-based search. The objective of this work is to enhance the system which re-arrange the images which user get from simple text-based search in such a way that, resultant image set contains relevant images. On this challenge, this paper proposed to use the semantic attributes for re-ranking. Every image describe through specific attribute. These attributes have already ready classifiers. User will gets responses from these classifiers on the basis of attribute. Every image in responses have relation with each other by mean of its attribute. This relation supposed to be shown by hypergraph. Images in the hypergraph ranked as per their ranking score. Ranking score represents similarity factor with respect to common attribute of images in hypergraph. This paper use attribute learning of images and hypergraph formation method to get valuable result.
机译:图像搜索重新排名是增强结果的强大方法,我们从基于文本的搜索得到。我们从基于文本的搜索获得嘈杂的数据。这项工作的目的是增强系统重新安排用户从基于简单的文本搜索的图像的系统,即所产生的图像集包含相关图像。在这一挑战上,本文建议使用语义属性进行重新排名。每个图像通过特定属性描述。这些属性已经准备好分类器。用户将在属性的基础上获取这些分类器的响应。响应中的每个图像都是通过其属性的平均值相互关系。这一关系应该通过超图表显示。超图中的图像按照他们的排名分数排名。排名分数表示超图中的图像的共同属性的相似因子。本文使用属性学习图像和超图形方法获得有价值的结果。

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