Multi-manifold data modeling via spectral curvature clustering

Series
Applied and Computational Mathematics Seminar
Time
Friday, April 17, 2009 - 1:00pm for 1 hour (actually 50 minutes)
Location
Skiles 255
Speaker
Gilad Lerman – University of Minnesota
Organizer
Sung Ha Kang

Please Note: Note special day.

We propose a fast multi-way spectral clustering algorithm for multi-manifold data modeling, i.e., modeling data by mixtures of manifolds (possibly intersecting). We describe the supporting theory as well as the practical choices guided by it. We first develop the case of hybrid linear modeling, i.e., when the underlying manifolds are affine subspaces in a Euclidean space, and then we extend this setting to more general manifolds. We exemplify the practical use of the algorithm by demonstrating its successful application to problems of motion segmentation.