Change detection in stochastic shape dynamical models with applications in activity modeling and abnormality detection [electronic resource] /
Abstract (Summary)
Title of Dissertation: Change Detection in Stochastic Shape Dynamical Models
with Applications in Activity Modeling and Abnormality Detection
Namrata Vaswani, Doctor of Philosophy, 2004
Dissertation directed by: Professor Rama Chellappa
Department of Electrical and Computer Engineering
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.
Change Detection in Stochastic Shape Dynamical Models with Applications
in Activity Modeling and Abnormality Detection
by
Namrata Vaswani
Thesis submitted to the Faculty of the Graduate School of the
University of Maryland, College Park in partial fulfillment
of the requirements for the degree of
Doctor of Philosophy
2004
Advisory Committee:
Professor Rama Chellappa, Chairman
Professor P.S. Krishnaprasad
Professor Adrian Papamarcou
Professor Prakash Narayan
Professor Larry Davis
c?Copyright by
Namrata Vaswani
2004
Bibliographical Information:
Advisor:
School:University of Maryland Baltimore
School Location:USA - Maryland
Source Type:Master's Thesis
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