General

Home
Welcome
Advisory Board
Annual Reports
Calendar
Contact Information
Directory
Events
History
Impact
Maps & Directions
News
Room Reservations

Information for:

Alumni
Current Students
Industry
New Faculty
New Students
Prospective Students
TAs

Information about:

Accreditation
Admissions
Courses
Faculty
Forms & Petitions
Procedures & Regulations
Programs
Research
Scholarships & Fellowships
Seminar Series
Staff
Surveys

Openings

Faculty Positions
Job Board
Postdoctoral Positions
TA Application


                                 Events Home   Upcoming Events   Seminar Series
                                 Workshops      PhD Defenses        Visitor Seminars     Faculty Lectures

2008-2009 Seminars by Visitors to the Department
(excluding speakers in the Seminar Series)

2008-2009     2007-2008    


Sparse Approximation and Atomic Decomposition: Considering Atom Interactions in Evaluating and Building Signal Representations.

Dr. Bob Sturm
UC Santa Barbara

Thursday, February 19, 2009 at 1:00pm
Engr IV Room 53-135

Abstract
I will present work from my recent dissertation, which makes contributions to the sparse approximation and efficient representation of complex signals, e.g., acoustic signals, using greedy iterative descent pursuits and overcomplete dictionaries. As others have noted before, peculiar problems arise when a signal model is mismatched to the signal content, and a pursuit makes bad selections from the dictionary. These result in models that contain several atoms having no physical significance to the signal, and instead exist to correct the representation through destructive interference. This diminishes the efficiency of the generated signal model, and hinder the useful application of sparse approximation to signal analysis (e.g., source identification), visualization (e.g., source selection), and modification (e.g., source extraction). While past works have addressed these problems by reformulating a pursuit to avoid them, in this dissertation we use these corrective terms to learn about the signal, the pursuit algorithm, the dictionary, and the created model. Our thesis is essentially that a better signal model results when a pursuit builds it considering the interaction between the atoms. We formally study these effects and propose novel measures of them to quantify the interaction between atoms in a model, and to illuminate the role of each atom in representing a signal. We propose and study different ways of incorporating these new measures into the atom selection criteria of greedy iterative descent pursuits, and show analytically and empirically that these interference-adaptive pursuits can produce models with increased efficiency and meaningfulness.

Bio
Dr. Sturm has received an undergraduate degree in physics from the University of Colorado, Boulder (B.A. 1998), a graduate degree in computer music from Stanford University (M.A. 1999), and a few other graduate degrees from the University of California, Santa Barbara (M.S. 2004, M.S. 2007, Ph.D. 2009). He will continue his research this March in sparse approximation and signal representation as a Chateaubriand Fellow post-doctoral researcher at the Université Pierre et Marie Curie, Paris 6.

 
 
Copyright © 2009. The University of California. All rights reserved.
UCLA Electrical Engineering. Email for comments on or questions about the website.