Title :
Compressed Sensing With Nonlinear Observations and Related Nonlinear Optimization Problems
Author :
Blumensath, Thomas
Author_Institution :
ISVR Signal Process. & Control Group, Univ. of Southampton, Southampton, UK
Abstract :
Nonconvex constraints are valuable regularizers in many optimization problems. In particular, sparsity constraints have had a significant impact on sampling theory, where they are used in compressed sensing and allow structured signals to be sampled far below the rate traditionally prescribed. Nearly, all of the theory developed for compressed sensing signal recovery assumes that samples are taken using linear measurements. In this paper, we instead address the compressed sensing recovery problem in a setting where the observations are nonlinear. We show that, under conditions similar to those required in the linear setting, the iterative hard thresholding algorithm can be used to accurately recover sparse or structured signals from few nonlinear observations. Similar ideas can also be developed in a more general nonlinear optimization framework. In the second part of this paper, we therefore present related result that shows how this can be done under sparsity and union of subspaces constraints, whenever a generalization of the restricted isometry property traditionally imposed on the compressed sensing system holds.
Keywords :
compressed sensing; iterative methods; optimisation; signal sampling; compressed sensing recovery problem; compressed sensing signal recovery; general nonlinear optimization framework; iterative hard thresholding algorithm; linear measurements; linear setting; nonconvex constraints; nonlinear observations; nonlinear optimization problems; restricted isometry property; sampling theory; sparse signals; sparsity constraints; structured signals; Compressed sensing; Convergence; Jacobian matrices; Matching pursuit algorithms; Optimization; Signal processing algorithms; Vectors; Compressed sensing (CS); inverse problems; nonconvex constraints; nonlinear optimization;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2013.2245716