PARTICLE METHODS FOR BAYESIAN MULTI-OBJECT TRACKING AND PARAMETER ESTIMATION

In this thesis a number of improvements have been established for specific methods which utilize sequential Monte Carlo (SMC aka. Particle filtering (PF) techniques. The first problem is the Bayesian multi-target tracking (MTT) problem for which we propose the use of non-parametric Bayesian models that are based on time varying extension of Dirichlet process (DP) models. The second problem studied in this thesis is an important application area for the proposed DP based MTT method; the tracking of vocal tract resonance frequencies of the speech signals. Lastly, we investigate SMC based parameter estimation problem of nonlinear non-Gaussian state space models in which we provide a performance improvement for the path density based methods by utilizing regularization techniques.

File Type: pdf
File Size: 4 MB
Publication Year: 2009
Author: Ozkan, Emre
Supervisors: Mubeccel Demirekler
Institution: Middle East Technical University
Keywords: Particle Filter, Dirichlet Process, Parameter Estimation, Target Tracking