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A visual analysis of articulated motion complexity based on optical flow and spatial-temporal features.

机译:基于光流和时空特征的关节运动复杂度的可视化分析。

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摘要

The understanding of motion is an important problem in computer vision with applications including crowd-flow analysis, video surveillance, and estimating three-dimensional structure. A less-explored problem is the visual characterization and quantification of motion complexity. An important motion class that is prevalent in living beings is articulated motion (segments connected by joints). At present, no known standardized measure for quantifying the complexity of articulated motion exists. Such a measure could facilitate advanced motion analysis with applications including video indexing, motion comparison, and advanced biological study of visual signals in organisms.;This dissertation presents an in-depth study of the development of several complexity measures for visual articulated motion. Optical flow is the basis of many motion estimation approaches and our first measure utilizes this as the starting point. Using optical flow, we develop a set of features to characterize different aspects of the motion and combine them to estimate the complexity of the movement.;The second measure also utilizes optical flow, but uses higher-order features as motion descriptors. Specifically, features that encode the periodic nature of movements, synchrony, and movement clusters are developed and used toward the design of a new and improved complexity measure. To validate the measure, a human study was conducted. Subjects were asked to (a) give motion complexity scores to a set of videos and (b) rank features based on their importance to complexity. Using this study, we developed prediction models to estimate the motion complexity and also classification models to classify the videos.;We use an alternative approach for our third measure based on interesting motion points in the combined space-time domain. These spatial-temporal interest points integrate hidden complexity information in the movement sequence. High level features are proposed to capture different dimensions of movement complexity from these interest points and then combined to estimate the overall complexity of the movement.;All three approaches have been evaluated using two datasets: human movements and wolf spider movements. Extensive evaluation of the measures show the accuracy of estimating the complexity of articulated motion, and demonstrate the efficacy of their use toward classifying motion based on complexity.
机译:对运动的理解是计算机视觉中的一个重要问题,其应用包括人群流分析,视频监视和估计三维结构。鲜为人知的问题是运动复杂度的视觉表征和量化。在生物中普遍存在的重要运动类别是关节运动(通过关节连接的节段)。当前,不存在用于量化关节运动的复杂度的已知标准化措施。这种措施可以促进先进的运动分析,包括视频索引,运动比较以及对生物中视觉信号的高级生物学研究等应用。本论文对视觉关节运动的几种复杂性措施的发展进行了深入研究。光流是许多运动估计方法的基础,我们的第一个措施就是以此为起点。使用光流,我们开发了一组特征来表征运动的不同方面,并将它们组合起来以估计运动的复杂性。第二种方法也利用了光流,但使用了高阶特征作为运动描述符。具体来说,编码运动,同步性和运动簇的周期性特征的功能已开发出来,并用于设计新的和改进的复杂性度量。为了验证该措施,进行了一项人体研究。要求受试者(a)对一组视频进行运动复杂性评分,以及(b)根据其对复杂性的重要性对特征进行排名。通过这项研究,我们开发了预测模型来估计运动复杂度,并开发了分类模型来对视频进行分类。;在组合时空域中,基于有趣的运动点,我们对第三种测量方法使用了替代方法。这些时空兴趣点将隐藏的复杂性信息整合到运动序列中。提出了高级特征以从这些兴趣点捕获运动复杂度的不同维度,然后组合以估计运动的整体复杂性。;这三种方法已使用两个数据集进行了评估:人类运动和狼蛛运动。对这些措施的广泛评估表明,估算关节运动的复杂性是正确的,并证明了其用于基于复杂性对运动进行分类的功效。

著录项

  • 作者

    Christ, Beau Michael.;

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 152 p.
  • 总页数 152
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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