Tel-Aviv University
School of Mathematical Sciences
Department Colloquium - Sackler Distinguished Lecture
Monday, April 26, 2010
Schreiber 006, 12:15
Ronald DeVore
Texas A & M University
A Taste of Compressed Sensing
Abstract:
Compressed Sensing is a new paradigm in signal and image processing. It
seeks to faithfully capture a signal/image with the fewest number of
measurements. Rather than model a signal as a bandlimited function or
an image as a pixel array, it models both of these as a sparse vector
in some representation system. This model fits well real world signals
and images. For example, images are well approximated by a sparse wavelet
decomposition. Given this model, how should we design a sensor to capture
the signal with the fewest number of measurements. We shall introduce
ways of measuring the effectiveness of compressed sensing algorithms
and then show which of these are optimal.

Coffee will be served at 12:00 before the lecture
at Schreiber building 006