Robotics Institute
Seminar, March 19
Time
and Place | Seminar Abstract | Speaker
Biography | Speaker Appointments
Integrating Generative Models and
Discriminative Models
Time and Place |
Mauldin Auditorium (NSH 1305)
Refreshments
Talk
There has been a
long-time debate about the use of generative models (top-down) and
discriminative models (bottom-up) in computer vision and machine learning
society. Bottom-up approaches are usually fast once trained but rather static.
Top-down approaches are, instead, slow but reflects the perception process of
the brain. In this talk, I'll briefly talk about the Data-driven Markov Chain
Monte Carlo (DDMCMC) computational paradigm which integrates generative models
and discriminative models in a principled way. The efficiency of the bottom-up
approaches are
decide by how "informative" they are. The DDMCMC paradigm is aimed to
tackle a general visual inference problem, "Image Parsing".
I'll
then present an algorithm for shape matching and recognition based on a
generative model for how one shape can be generated by the other. The matching
process is formulated in the EM algorithm. To have a fast algorithm and avoid
local minima, we show how the EM algorithm can be approximated by using
bottom-up approaches, informative features. The formulation allows us to know
when and why approximations can be made and justifies the use of bottom-up
features, which are used in a wide range of vision problems. This integrates
generative models and feature-based approaches within the EM framework and
helps clarifying the relationships between different algorithms for this
problem such as shape contexts and softassign.
Speaker Biography |
Zhuowen Tu
received his Ph.D. degree in computer science from the
He received the Talbert Abrams award
(Honorable mention) by American Society of Photogrammetry
and Remote Sensing in 2003. He was also awarded with the David Marr prize at
the 9th international conference on computer vision in Nice France.
Speaker Appointments |
For appointments, please contact Yanxi Liu.
The Robotics Institute is part of the School of Computer Science, Carnegie Mellon University.