Diversity in image retrieval based on inferring user image search goals

Jackulin Thangarasu, P. Geetha
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Abstract

Image retrieval is an extremely tough process to retrieve the user perception based on the customer intervention from the dynamic data set. Various technologies are there to retrieve the images with the similar technique is mining user's search goals. In this paper we summarized all the existing technique and we introduced our improved user image search goal prediction and retrieving. To make this browsing process more efficient, image summarization is often needed to address this problem. In web search applications, users submit queries (i.e., some keywords) to search engines to represent their search goals. However, in many cases, queries may not exactly represent what they want. For this problem we analyzed various existing methodologies like visual, clustering, colors/shape based, image, feature based. Each method contains different output and features. In this paper we compared these methods and we proposed our work based on text and image based retrieval.
基于推断用户图像搜索目标的图像检索多样性
图像检索是一个极其困难的过程,需要从动态数据集中检索基于用户干预的用户感知。有各种各样的技术来检索图像,类似的技术是挖掘用户的搜索目标。本文在总结现有技术的基础上,介绍了改进后的用户图像搜索目标预测与检索方法。为了提高浏览过程的效率,通常需要使用图像摘要来解决这个问题。在web搜索应用程序中,用户向搜索引擎提交查询(即某些关键字),以表示他们的搜索目标。然而,在许多情况下,查询可能并不完全代表他们想要的。对于这个问题,我们分析了各种现有的方法,如视觉、聚类、基于颜色/形状、基于图像、基于特征。每种方法包含不同的输出和特征。本文对这些方法进行了比较,并提出了基于文本和基于图像的检索方法。
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