This item is only available for download by members of the University of Illinois community. Students, faculty, and staff at the U of I may log in with your NetID and password to view the item. If you are trying to access an Illinois-restricted dissertation or thesis, you can request a copy through your library's Inter-Library Loan office or purchase a copy directly from ProQuest.
Permalink
https://hdl.handle.net/2142/81069
Description
Title
Visual Face Tracking and Its Applications
Author(s)
Tu, Jilin
Issue Date
2007
Doctoral Committee Chair(s)
Thomas Huang
Department of Study
Electrical Engineering
Discipline
Electrical Engineering
Degree Granting Institution
University of Illinois at Urbana-Champaign
Degree Name
Ph.D.
Degree Level
Dissertation
Keyword(s)
Engineering, Electronics and Electrical
Language
eng
Abstract
This dissertation aims at developing algorithms for tracking human faces in videos for two scenarios: (1) human computer interaction HC), and (2) meeting room video analysis (MRVA). In the HCI scenario, the face usually appears close to the camera in high resolution. We explore Active Shape Model (ASM) techniques for localizing the 2D facial features in a CONDENSATION framework. The 3D face location and orientation can be inferred using an optical flow based 3D model face tracker. In the MRVA scenario, the faces are usually far away from the camera and the resolution is low. Tensor techniques are explored for localizing the faces. Various techniques, i.e., meanshift tracking, annealed particle filtering, and online model updating in generative Bayesian model and in subspaces, are explored for tracking the 212 head locations and 3D head poses. The focus of attention of the meeting attendants can then be inferred based on the head pose. As many inference tasks depend on the object appearances cropped according to the tracking result, which however is usually noisy due to outliers and imperfect models, we also explore the possibility of eliminating the appearance inconsistency caused by misalignments by simultaneously refining PCA models from the data using variational message passing (VMP) techniques, Based on the algorithms we have developed, we show the performance of a camera mouse in the HCI scenario, We also show some experiments for meeting room video indexing and retrieval in the MRVA scenario.
Use this login method if you
don't
have an
@illinois.edu
email address.
(Oops, I do have one)
IDEALS migrated to a new platform on June 23, 2022. If you created
your account prior to this date, you will have to reset your password
using the forgot-password link below.