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A computational framework for unsupervised analysis of everyday human activities.

机译:用于日常人类活动的无监督分析的计算框架。

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摘要

In order to make computers proactive and assistive, we must enable them to perceive, learn, and predict what is happening in their surroundings. This presents us with the challenge of formalizing computational models of everyday human activities. For a majority of environments, the structure of the in situ activities is generally not known a priori . This thesis therefore investigates knowledge representations and manipulation techniques that can facilitate learning of such everyday human activities in a minimally supervised manner.;A key step towards this end is finding appropriate representations for human activities. We posit that if we chose to describe activities as finite sequences of an appropriate set of events, then the global structure of these activities can be uniquely encoded using their local event sub-sequences. With this perspective at hand, we particularly investigate representations that characterize activities in terms of their fixed and variable length event subsequences. We comparatively analyze these representations in terms of their representational scope, feature cardinality and noise sensitivity.;Exploiting such representations, we propose a computational framework to discover the various activity-classes taking place in an environment. We model these activity-classes as maximally similar activity-cliques in a completely connected graph of activities, and describe how to discover them efficiently. Moreover, we propose methods for finding concise characterizations of these discovered activity-classes, both from a holistic as well as a by-parts perspective. Using such characterizations, we present an incremental method to classify a new activity instance to one of the discovered activity-classes, and to automatically detect if it is anomalous with respect to the general characteristics of its membership class. Our results show the efficacy of our framework in a variety of everyday environments.
机译:为了使计算机具有主动性和辅助性,我们必须使它们能够感知,学习和预测周围环境的变化。这给我们带来了形式化日常人类活动的计算模型的挑战。对于大多数环境而言,原位活动的结构通常不是先验的。因此,本论文研究了知识表示和操纵技术,这些知识和操纵技术可以以最少的监督方式促进对此类日常人类活动的学习。;为此目的的关键一步是找到适合人类活动的表征。我们假设,如果我们选择将活动描述为一组适当的事件的有限序列,则可以使用其本地事件子序列对这些活动的全局结构进行唯一编码。借助这种观点,我们特别研究了根据活动的固定和可变长度事件子序列来表征活动的表示形式。我们从它们的表示范围,特征基数和噪声敏感度方面对这些表示进行了比较分析;通过利用这些表示,我们提出了一个计算框架来发现环境中发生的各种活动类别。我们在完全连接的活动图中将这些活动类别建模为最大相似的活动类别,并描述如何有效地发现它们。此外,我们提出了从整体和分部的角度来寻找这些发现的活动类别的简洁特征的方法。使用这种特征,我们提出了一种增量方法,将新的活动实例分类为已发现的活动类别之一,并自动检测其成员资格类别的一般特征是否异常。我们的结果表明了我们的框架在各种日常环境中的有效性。

著录项

  • 作者

    Hamid, Muhammad.;

  • 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 2008
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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