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Efficient three-dimensional motion pattern retrieval in large motion capture databases.

机译:大型运动捕捉数据库中的高效三维运动模式检索。

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摘要

This dissertation studies 3D motion capture data based on the analysis of geometric structures of data matrices. Effective retrieval of motion patterns from motion streams requires efficient motion indexing, classification, recognition and segmentation techniques. Although 3D motion data has been increasingly generated in many applications, no efficient approaches have been available to segment data streams, to classify and index isolated multi-attribute data. This study addresses these issues and proposes generic approaches applicable to any data sequences of multiple attributes.;Motion data for dozens of variables has accordingly dozens of attributes, and might have different lengths for any two motions. A motion data matrix can be considered to be a sequence of high dimensional points in a high dimensional space. Although the number of points can be different for any two motion data matrices, the geometric structures or data distributions would be similar if two motions are similar. Singular value decomposition (SVD) is explored to capture the geometric structures of motion data. It exposes different directions of data distributions and data variances along these directions, and these directions and variances can be utilized for our purposes.;To index multi-attribute motion data, different vectors are extracted before dimensionality reduction for feature vectors, and two interval-based indexing structures are proposed. The first indexing approach inserts the identifier of a motion into one leaf node, making it possible to search for any less similar motions, or for motions with any variations. The second approach narrows down similarity ranges determined by available motion data, and inserts the identifier of a motion into all possible leaf nodes with identifiers of similar motions. This multiple insertion approach reduces query time to several microseconds. At each tree level, only one component of the query vector needs to be checked for a query. Searching time is independent of the number of pattern motions indexed by the tree, making the index structure well scalable to large data repositories.;For segmenting and recognizing motion streams by similarity search, two similarity measures are defined. MAS, or Main Angular Similarity measure, considers the most dominating components from SVD, while kWAS considers multiple weighted dominating components. The similarity measures can be applied to stream segmentation with high recognition accuracy. Different motions having similar data distributions are further differentiated by data projections which can reflect the motion temporal orders.;When there are a large number of repetitions for each motion, classification can be utilized to classify unknown motions. Support vector machine (SVM) classifiers are explored for classification. Highly discriminative feature vectors are extracted by using SVD, and SVM classifiers with decision values and with probability estimates are used for isolated motions and for motion streams, respectively. A novel clustering technique has been proposed to significantly reduce the number of motion classes involved for each motion classification. For segmenting motion streams using classification, motion temporal coherence is coupled with SVM classifiers for better recognition performance.;Experiments with hand gestures and human body motions demonstrate the utility of the proposed indexing, similarity measure and classification approaches. Data can have a large number of attributes, different lengths, and local and global scaling as long as different attributes are correlated.
机译:本文基于对数据矩阵几何结构的分析,研究了3D运动捕捉数据。从运动流中有效检索运动模式需要有效的运动索引,分类,识别和分段技术。尽管在许多应用程序中越来越多地生成了3D运动数据,但是还没有有效的方法来分割数据流,对孤立的多属性数据进行分类和索引。这项研究解决了这些问题,并提出了适用于多种属性的任何数据序列的通用方法。数十个变量的运动数据因此具有数十个属性,并且对于任何两个运动可能具有不同的长度。运动数据矩阵可以被认为是高维空间中的高维点的序列。尽管对于任何两个运动数据矩阵,点的数量可以不同,但​​是如果两个运动相似,则几何结构或数据分布也将相似。探索奇异值分解(SVD)以捕获运动数据的几何结构。它揭示了沿这些方向的数据分布和数据方差的不同方向,这些方向和方差可用于我们的目的。为了索引多属性运动数据,在特征向量降维之前提取了不同的向量,并且两个区间提出了基于索引的索引结构。第一种索引方法将运动的标识符插入一个叶节点,从而可以搜索任何不太相似的运动或具有任何变化的运动。第二种方法缩小了由可用运动数据确定的相似性范围,并将运动的标识符插入具有相似运动的标识符的所有可能的叶节点中。这种多重插入方法将查询时间减少到几微秒。在每个树级别,仅需查询查询向量的一个分量即可进行查询。搜索时间与树索引的模式运动次数无关,从而使索引结构可以很好地扩展到大型数据存储库。为了通过相似性搜索对运动流进行分段和识别,定义了两种相似性度量。 MAS或“主角相似性”度量考虑了SVD中最主要的成分,而kWAS考虑了多个加权的主要成分。可以将相似性度量应用于具有高识别精度的流分割。具有相似数据分布的不同运动通过可以反映运动时间顺序的数据投影进一步区分。当每个运动有大量重复时,可以使用分类对未知运动进行分类。探索了支持向量机(SVM)分类器进行分类。通过使用SVD提取具有高度区分性的特征向量,并将具有决策值和概率估计值的SVM分类器分别用于孤立运动和运动流。已经提出了一种新颖的聚类技术来显着减少每种运动分类所涉及的运动类别的数量。为了使用分类来分割运动流,将运动时间相干性与SVM分类器结合使用,以实现更好的识别性能。手势和人体运动实验证明了所提出的索引,相似性度量和分类方法的实用性。数据可以具有大量的属性,不同的长度以及局部和全局缩放,只要关联不同的属性即可。

著录项

  • 作者

    Li, Chuanjun.;

  • 作者单位

    The University of Texas at Dallas.;

  • 授予单位 The University of Texas at Dallas.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 康复医学;
  • 关键词

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