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A novel sequence representation for unsupervised analysis of human activities

机译:用于人类活动无监督分析的新型序列表示

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摘要

Formalizing computational models for everyday human activities remains an open challenge. Many previous approaches towards this end assume prior knowledge about the structure of activities, using which explicitly denned models are learned in a completely supervised manner. For a majority of everyday environments however, the structure of the in situ activities is generally not known a priori. In this paper we investigate knowledge representations and manipulation techniques that facilitate learning of human activities in a minimally supervised manner. The key contribution of this work is the idea that global structural information of human activities can be encoded using a subset of their local event subsequences, and that this encoding is sufficient for activity-class discovery and classification.rnIn particular, we investigate modeling activity sequences in terms of their constituent subsequences that we call event n-grams. Exploiting this representation, we propose a computational framework to automatically 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 characterizations of these discovered classes from a holistic as well as a by-parts perspective. Using such characterizations, we present a method to classify a new activity to one of the discovered activity-classes, and to automatically detect whether it is anomalous with respect to the general characteristics of its membership class. Our results show the efficacy of our approach in a variety of everyday environments.
机译:将日常人类活动的计算模型形式化仍然是一个开放的挑战。为此目的,许多以前的方法都假设有关于活动结构的先验知识,利用这些知识,可以以完全监督的方式学习明确定义的模型。然而,对于大多数日常环境而言,原位活动的结构通常不是先验的。在本文中,我们研究了知识表示和操纵技术,这些知识和操纵技术以最小的监督方式促进了人类活动的学习。这项工作的关键贡献在于,可以使用局部事件子序列的一部分来编码人类活动的全局结构信息,并且这种编码足以用于活动类的发现和分类。rn特别是,我们研究了对活动序列进行建模的方法就其组成子序列而言,我们称之为事件n-gram。利用这种表示形式,我们提出了一个计算框架来自动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,我们提出了从整体以及分部的角度寻找这些发现类的特征的方法。使用这样的特征,我们提出了一种方法来将一个新的活动分类为一个发现的活动类别,并就其成员资格类别的一般特征自动检测它是否异常。我们的结果表明了我们的方法在各种日常环境中的有效性。

著录项

  • 来源
    《Artificial intelligence》 |2009年第14期|1221-1244|共24页
  • 作者单位

    College of Computing, Georgia Institute of Technology - Atlanta, CA, USA;

    College of Computing, Georgia Institute of Technology - Atlanta, CA, USA;

    College of Computing, Georgia Institute of Technology - Atlanta, CA, USA;

    College of Computing, Georgia Institute of Technology - Atlanta, CA, USA;

    College of Computing, Georgia Institute of Technology - Atlanta, CA, USA;

    College of Computing, Georgia Institute of Technology - Atlanta, CA, USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    temporal reasoning; scene analysis; computer vision;

    机译:时间推理;场景分析;计算机视觉;

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