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Learning ranking functions for video search on the web.

机译:学习用于在网络上进行视频搜索的排名功能。

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摘要

Videos on the Internet have become widespread. However search engines are still mostly limited to using associated text data to find desired content. In this dissertation, we build ranking functions that can directly analyze image and video content and assign a ranking to a database with respect to user queries.;A common approach to building ranking functions is to use a machine learning algorithm to perform a priori training of class concepts and use the trained classifier as the ranking function. However, a priori training of class concepts for retrieval is daunting since users queries can be very diverse. In addition, a priori training cannot capture the subjective component of user queries. For example, if a user were searching for videos of "nice basketball shots," there would be no way to know what the user considers "nice." Relevance feedback (RF) is an interactive search framework that captures user subjectivity and supports on-the-fly learning of target classes.;However, RF is limited in its need for large amounts of user feedback when the data being searched are complex (e.g. Internet content). Transfer learning (TL) is a machine learning formulation where existing knowledge about a related "source" classification task can be used to improve the generalization performance of a "target" task (where training data is scarce). In this dissertation we explore the combination of RF and TL and present a framework which can learn more from the user with less feedback. We show extensive experiments with real-world data taken from the Internet and show improved performance over past RF frameworks.;Although our RF and TL framework is effective for a wide range of queries, we acknowledge that there are some highly specific but common queries users could make which would benefit from more dedicated design of a ranking function. For example, finding particular people using face recognition would be an important type of query on the Internet. The problem in this case is well defined and objective. While the problem is specific, it is important enough to warrant the dedicated design of a ranking function. Thus we complete our studies in this dissertation through the exploration of a robust face recognition based ranking function and show strong results in a challenging face identity retrieval task.
机译:互联网上的视频已经普及。然而,搜索引擎仍主要限于使用关联的文本数据来查找所需的内容。在本文中,我们构建了可以直接分析图像和视频内容并针对用户查询对数据库进行排名的排名功能。一种常见的构建排名功能的方法是使用机器学习算法对用户进行先验训练。分类概念,并使用经过训练的分类器作为排名功能。但是,由于用户查询可能非常多样化,因此对用于检索的类概念进行先验训练是艰巨的。另外,先验训练不能捕获用户查询的主观成分。例如,如果用户正在搜索“漂亮的篮球镜头”的视频,则将无法得知用户认为“漂亮”的东西。相关性反馈(RF)是一种交互式搜索框架,可捕获用户的主观性并支持对目标类别的即时学习;但是,当搜索的数据复杂时,RF便需要大量用户反馈,这是有限的互联网内容)。转移学习(TL)是一种机器学习公式,其中可以使用有关“源”分类任务的现有知识来改善“目标”任务(训练数据稀缺)的泛化性能。在本文中,我们探索了RF和TL的结合,并提出了一个可以以更少的反馈向用户学习更多的框架。我们展示了使用Internet上的真实数据进行的大量实验,并显示了过去RF框架的改进性能;尽管我们的RF和TL框架对于各种查询都是有效的,但我们承认有一些高度特定但通用的查询用户可以从排名函数的更专用设计中受益。例如,使用面部识别找到特定的人将是Internet上的一种重要查询类型。在这种情况下,该问题已明确定义且是客观的。虽然问题是特定的,但重要的是要保证专门设计排序功能。因此,我们通过探索基于鲁棒的人脸识别的排名函数来完成本论文的研究,并在具有挑战性的人脸身份检索任务中显示出了出色的结果。

著录项

  • 作者

    Lam, Antony M.;

  • 作者单位

    University of California, Riverside.;

  • 授予单位 University of California, Riverside.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 110 p.
  • 总页数 110
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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