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Learning-based human activity recognition.

机译:基于学习的人类活动识别。

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摘要

Recognizing human activities has been an extensive and interesting research topic since early 1980s. However, when deploying human activity recognition solutions to the real world, the solutions we provide must satisfy a series of requirements. We would expect our solution to be able to learn a reasonable model from as limited training data as possible. We also hope our solution would be able to deal with the complex relationships which exist in human activities. As is the case for almost all machine learning solutions, we would hope that our solution is scalable and efficient. In this thesis, we start by surveying related work and then study the solution to some specific challenges which are important to deploy these activity recognition systems in the real world.;Specifically,We first analyze how to recognize multiple activities in the physical world environment, especially when such activities have concurrent and interleaving relationships. Next, we extend such a framework to the problem of Web query classification, by exploiting the relatedness of search queries to activities with interleaving relationships and propose a context-aware query classification algorithm.;Secondly, we study the problem of abnormal activity recognition. These abnormal activities are rare to happen and it is difficult to collect enough training data about them. We design an algorithm based on the Hierarchical Dirichlet Process and the one-class Support Vector Machine to recognize abnormal activities when the training data is scarce. Finally, when we need to deploy the activity recognition systems in the real-world, it is impractical for us to collect enough training data for different activity recognition scenarios, especially when we need to collect training data for different persons and even for different actions. To solve this problem, we've developed an activity recognition framework based on transfer learning which borrows useful information from previously collected and learned activity recognition domains and then re-use such information into the new target activity recognition domain. Furthermore, we've conducted extensive experiments to demonstrate the effectiveness of our proposed approaches on real-world datasets collected from smart homes or sensor environments. We've also shown that our context-aware query classification algorithm could outperform state-of-the-art query classification approaches on real-world query engine search logs. At the end of this thesis, we discuss some possible directions and problems for future work and extensions.
机译:自1980年代初以来,认识人类活动一直是一个广泛而有趣的研究主题。但是,在将人类活动识别解决方案部署到现实世界时,我们提供的解决方案必须满足一系列要求。我们希望我们的解决方案能够从尽可能少的培训数据中学习合理的模型。我们也希望我们的解决方案能够处理人类活动中存在的复杂关系。与几乎所有机器学习解决方案一样,我们希望我们的解决方案可扩展且高效。本文首先对相关工作进行调查,然后研究一些挑战的解决方案,这些挑战对于在现实世界中部署这些活动识别系统非常重要。具体而言,我们首先分析如何在物理世界环境中识别多种活动,特别是当此类活动具有并发和交错关系时。接下来,通过利用搜索查询与具有交织关系的活动的相关性,将这种框架扩展到Web查询分类问题,并提出一种上下文感知的查询分类算法。其次,研究异常活动识别问题。这些异常活动很少发生,并且很难收集有关它们的足够训练数据。我们设计了一种基于层次Dirichlet过程和一类支持向量机的算法,以在训练数据稀缺时识别异常活动。最后,当我们需要在现实世界中部署活动识别系统时,为不同的活动识别场景收集足够的训练数据是不切实际的,尤其是当我们需要为不同的人甚至不同的动作收集训练数据时。为了解决这个问题,我们开发了一个基于转移学习的活动识别框架,该框架从先前收集和学习的活动识别域中借鉴有用的信息,然后将这些信息重新用于新的目标活动识别域。此外,我们进行了广泛的实验,以证明我们提出的方法在从智能家居或传感器环境收集的真实数据集上的有效性。我们还显示,我们的上下文感知查询分类算法可以在现实世界中的查询引擎搜索日志中胜过最新的查询分类方法。在本文的最后,我们讨论了未来工作和扩展的一些可能的方向和问题。

著录项

  • 作者

    Hu, Hao.;

  • 作者单位

    Hong Kong University of Science and Technology (Hong Kong).;

  • 授予单位 Hong Kong University of Science and Technology (Hong Kong).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 132 p.
  • 总页数 132
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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