Title :
Density evolution of sparse source signals
Author :
Erich Zöchmann;Peter Gerstoft;Christoph F. Mecklenbräuker
Author_Institution :
Institute of Telecommunications, Vienna University of Technology, 1040, Austria
fDate :
6/1/2015 12:00:00 AM
Abstract :
A sequential Bayesian approach to density evolution for sparse source reconstruction is proposed and analysed which alternatingly solves a generalized LASSO problem and its dual. Waves are observed by a sensor array. The waves are emitted by a spatially-sparse set of sources. A weighted Laplace-like prior is assumed for the sources such that the maximum a posteriori source estimate at the current time step is the solution to a generalized LASSO problem. The posterior Laplace-like density at step k is approximated by the corresponding dual solution. The posterior density at step k leads to the prior density at k+1 by applying a motion model. Thus, a sequence of generalized LASSO problems is solved for estimating the temporal evolution of a sparse source field.
Keywords :
"Arrays","Mathematical model","Bayes methods","Estimation","Conferences","Compressed sensing","Radar applications"
Conference_Titel :
Compressed Sensing Theory and its Applications to Radar, Sonar and Remote Sensing (CoSeRa), 2015 3rd International Workshop on
DOI :
10.1109/CoSeRa.2015.7330277