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Learning an integrated hybrid image retrieval system.

机译:学习集成的混合图像检索系统。

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摘要

Current Web image search engines, such as Google or Bing Images, adopt a hybrid search approach in which a text-based query (e.g. “apple”) is used to retrieve a set of relevant images, which are then refined by the user (e.g. by re-ranking the retrieved images based on similarity to a selected example). This approach makes it possible to use both text information (e.g. the initial query) and image features (e.g. as part of the refinement stage) to identify images which are relevant to the user. One limitation of these current systems is that text and image features are treated as independent components and are often used in a decoupled manner. This work proposes to develop an integrated hybrid search method which leverages the synergies between text and image features. Recently, there has been tremendous progress in the computer vision community in learning models of visual concepts from collections of example images. While impressive performance has been achieved on standardized data sets, scaling these methods so that they are capable of working at web scale remains a significant challenge. This work will develop approaches to visual modelling that can be scaled to address the task of retrieving billions of images on the Web.;Specifically, we propose to address two research issues related to integrated text- and image-based retrieval. First, we will explore whether models of visual concepts which are learned from collections of web images can be utilized to improve the image ranking associated with a text-based query. Second, we will investigate the hypothesis that the click-patterns associated with standard web image search engines can be utilized to learn query-specific image similarity measures that support improved query-refinement performance. We will evaluate our research by constructing a prototype integrated hybrid retrieval system based on the data from 300K real-world image queries. We will conduct user-studies to evaluate the effectiveness of our learned similarity measures and quantify the benefit of our method in real world search tasks such as target search.
机译:当前的Web图像搜索引擎(例如Google或Bing Images)采用混合搜索方法,其中基于文本的查询(例如“苹果”)用于检索一组相关图像,然后由用户进行精炼(例如通过基于与所选示例的相似性对检索到的图像进行重新排名)。该方法使得可以使用文本信息(例如,初始查询)和图像特征(例如,作为细化阶段的一部分)两者来识别与用户相关的图像。这些当前系统的局限性在于,文本和图像特征被视为独立的组件,并且经常以分离的方式使用。这项工作建议开发一种综合的混合搜索方法,该方法利用了文本和图像特征之间的协同作用。最近,计算机视觉社区在从示例图像集合中学习视觉概念模型方面取得了巨大进步。尽管在标准化数据集上已经取得了令人印象深刻的性能,但是缩放这些方法以使其能够在Web规模上运行仍然是一个巨大的挑战。这项工作将开发可视化建模方法,这些方法可以扩展以解决在Web上检索数十亿张图像的任务。具体来说,我们建议解决与基于文本和图像的集成检索有关的两个研究问题。首先,我们将探讨从网络图像集合中学到的视觉概念模型是否可以用于改善与基于文本的查询相关的图像排名。其次,我们将研究以下假设:与标准Web图像搜索引擎关联的点击模式可用于学习支持改进查询优化性能的特定于查询的图像相似性度量。我们将基于300K真实世界图像查询中的数据,构建一个原型集成的混合检索系统,以评估我们的研究成果。我们将进行用户研究,以评估所学习的相似性度量的有效性,并量化我们的方法在诸如目标搜索之类的现实世界搜索任务中的收益。

著录项

  • 作者

    Jing, Yushi.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Artificial Intelligence.;Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 120 p.
  • 总页数 120
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:42:51

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