Time and Location:   February 4, 2004, 2-3:00pm, Room 1314.
  
  Title:     Recovering sparse expansions after noisy 
blur
 
   Speaker:     Ingrid Daubechies, Princeton University 
and Courant Institute
 
   
   Abstract:
   
     An image that is blurred (by e.g. convolution with a gaussian kernel)
 cannot be recovered perfectly in a numerically stable way. To get
 around this, many regularization methods have been proposed. Typically
 they exploit known general properties of the class of images under
 study to restore some measure of stability to the problem; they also
 give estimates on how much resolution one can hope to gain.
 In this talk we show how to use the prior knowledge that the image
 has a sparse expansion in a wavelet basis. (This talk picks up 
 essentially where the speaker left off in her Applied Math talk in
 December, but it is not necessary to have heard that talk.) In
 particular, we discuss the algorithm and proofs in some detail, as well
 as some generalizations of the approach.