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Low complexity differential geometric computationswith applications to activity analysis.

机译:低复杂度微分几何计算及其在活动分析中的应用。

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摘要

In this thesis, we consider the problem of fast and efficient indexing techniques for time sequences which evolve on manifold-valued spaces. Using manifolds is a convenient way to work with complex features that often do not live in Euclidean spaces. However, computing standard notions of geodesic distance, mean etc. can get very involved due to the underlying non-linearity associated with the space. As a result a complex task such as manifold sequence matching would require very large number of computations making it hard to use in practice. We believe that one can device smart approximation algorithms for several classes of such problems which take into account the geometry of the manifold and maintain the favorable properties of the exact approach. This problem has several applications in areas of human activity discovery and recognition, where several features and representations are naturally studied in a non-Euclidean setting. We propose a novel solution to the problem of indexing manifold-valued sequences by proposing an intrinsic approach to map sequences to a symbolic representation. This is shown to enable the deployment of fast and accurate algorithms for activity recognition, motif discovery, and anomaly detection. Toward this end, we present generalizations of key concepts of piece-wise aggregation and symbolic approximation for the case of non-Euclidean manifolds. Experiments show that one can replace expensive geodesic computations with much faster symbolic computations with little loss of accuracy in activity recognition and discovery applications. The proposed methods are ideally suited for real-time systems and resource constrained scenarios.
机译:本文考虑了在流形值空间上演化的时间序列的快速有效索引技术问题。使用流形是处理通常不存在于欧几里得空间中的复杂特征的便捷方法。但是,由于与空间相关的潜在非线性,计算测地距离,均值等标准概念会变得非常复杂。结果,诸如流形序列匹配之类的复杂任务将需要非常大量的计算,从而使其在实践中难以使用。我们认为,可以为几类此类问题配备智能逼近算法,这些算法考虑了歧管的几何形状并保持了精确方法的有利特性。这个问题在人类活动发现和识别领域中有多种应用,其中在非欧几里得环境中自然研究了几种特征和表示。我们通过提出一种将序列映射到符号表示的内在方法,为索引流形值序列的问题提出了一种新颖的解决方案。这表明可以为活动识别,主题发现和异常检测部署快速而准确的算法。为此,我们介绍了非欧氏流形情况下分段聚合和符号逼近的关键概念的一般化。实验表明,可以用更快的符号计算代替昂贵的测地线计算,而在活动识别和发现应用程序中的精度损失很小。提出的方法非常适合实时系统和资源受限的情况。

著录项

  • 作者

    Anirudh, Rushil.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Engineering Electronics and Electrical.;Computer Science.
  • 学位 M.S.
  • 年度 2012
  • 页码 42 p.
  • 总页数 42
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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