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Change detection in stochastic shape dynamical models with applications in activity modeling and abnormality detection.

机译:随机形状动力学模型中的变化检测及其在活动建模和异常检测中的应用。

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摘要

The goal of this research is to model an "activity" performed by a group of moving and interacting objects (which can be people or cars or robots or different rigid components of the human body) and use these models for abnormal activity detection, tracking and segmentation. Previous approaches to modeling group activity include co-occurrence statistics (individual and joint histograms) and Dynamic Bayesian Networks, neither of which is applicable when the number of interacting objects is large. We treat the objects as point objects (referred to as "landmarks") and propose to model their changing configuration as a moving and deforming "shape" using ideas from Kendall's shape theory for discrete landmarks. A continuous state HMM is defined for landmark shape dynamics in an "activity". The configuration of landmarks at a given time forms the observation vector and the corresponding shape and scaled Euclidean motion parameters form the hidden state vector. The dynamical model for shape is a linear Gauss-Markov model on shape "velocity". The "shape velocity" at a point on the shape manifold is defined in the tangent space to the manifold at that point. Particle filters are used to track the HMM, i.e. estimate the hidden state given observations.; An abnormal activity is defined as a change in the shape activity model, which could be slow or drastic and whose parameters are unknown. Drastic changes can be easily detected using the increase in tracking error or the negative log of the likelihood of current observation given past (OL). But slow changes usually get missed. We have proposed a statistic for slow change detection called ELL (which is the Expectation of negative Log Likelihood of state given past observations) and shown analytically and experimentally the complementary behavior of ELL and OL for slow and drastic changes. We have established the stability (monotonic decrease) of the errors in approximating the ELL for changed observations using a particle filter that is optimal for the unchanged system. Asymptotic stability is shown under stronger assumptions. Finally, it is shown that the upper bound on ELL error is an increasing function of the "rate of change" with increasing derivatives of all orders, and its implications are discussed.; Another contribution of the thesis is a linear subspace algorithm for pattern classification, which we call Principal Components' Null Space Analysis (PCNSA). PCNSA was motivated by Principal Components' Analysis (PCA) and it approximates the optimal Bayes classifier for Gaussian distributions with unequal covariance matrices. We have derived classification error probability expressions for PCNSA and compared its performance with that of subspace Linear Discriminant Analysis (LDA) both analytically and experimentally. Applications to abnormal activity detection, human action retrieval, object/face recognition are discussed.
机译:这项研究的目的是对一组运动和相互作用的对象(可以是人,汽车或机器人或人体的不同刚性组件)执行的“活动”进行建模,并将这些模型用于异常活动检测,跟踪和跟踪。分割。组活动建模的先前方法包括共现统计(个体和联合直方图)和动态贝叶斯网络,当交互对象的数量很大时,这两种方法都不适用。我们将对象视为点对象(称为“地标”),并建议使用Kendall的形状理论中离散离散地标的思想,将其变化的配置建模为移动和变形的“形状”。为“活动”中的界标形状动力学定义了连续状态HMM。在给定时间的地标配置形成观察向量,相应的形状和缩放的欧几里得运动参数形成隐藏状态向量。形状的动力学模型是形状“速度”的线性高斯-马尔可夫模型。形状歧管上某一点的“形状速度”在该点处与歧管的切线空间中定义。粒子过滤器用于跟踪HMM,即根据给定的观测值估计隐藏状态。异常活动定义为形状活动模型中的变化,该变化可能缓慢或剧烈,并且其参数未知。使用跟踪误差的增加或给定过去(OL)的当前观察值的可能性的负对数,可以轻松检测出剧烈变化。但是缓慢的变化通常会被错过。我们已经提出了一种用于缓慢变化检测的统计量,称为ELL(根据过去的观察结果,它是对数对数似然状态的期望值),并通过分析和实验方式显示了ELL和OL的缓慢和剧烈变化的互补行为。我们已经建立了使用近似于不变系统的最佳粒子滤波器的近似误差(单调减少)的误差的稳定性(单调减小)。在更强的假设下显示了渐近稳定性。最后,表明ELL误差的上限是“变化率”随所有阶数导数增加的增加函数,并讨论了其含义。本文的另一个贡献是用于模式分类的线性子空间算法,我们称之为主成分的零空间分析(PCNSA)。 PCNSA受主成分分析(PCA)的启发,它使用不等协方差矩阵来近似高斯分布的最佳贝叶斯分类器。我们导出了PCNSA的分类误差概率表达式,并将其性能与子空间线性判别分析(LDA)进行了分析和实验比较。讨论了异常活动检测,人体动作检索,对象/面部识别的应用。

著录项

  • 作者

    Vaswani, Namrata.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Statistics.; Computer Science.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 187 p.
  • 总页数 187
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 统计学;自动化技术、计算机技术;
  • 关键词

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