DocumentCode :
85236
Title :
Compressive Sensing With Prior Information: Requirements and Probabilities of Reconstruction in {mbi \\ell }_{\\bf 1} -Minimization
Author :
Miosso, Cristiano J. ; von Borries, R. ; Pierluissi, J.H.
Author_Institution :
Univ. of Brasilia at Gama-FGA/UnB, Gama, Brazil
Volume :
61
Issue :
9
fYear :
2013
fDate :
1-May-13
Firstpage :
2150
Lastpage :
2164
Abstract :
In compressive sensing, prior information about the sparse representation´s support reduces the theoretical minimum number of measurements that allows perfect reconstruction. This theoretical lower bound corresponds to the ideal reconstruction procedure based on ℓ0-minimization, which is not practical for most real-life signals. In this paper, we show that this type of prior information also improves the probability of reconstruction from limited linear measurements when using the more practical ℓ1-minimization procedure, for the same considered stochastic signal. In order to prove this result, we present the necessary and sufficient conditions for signal reconstruction by ℓ1-minimization when using prior information. We then prove that the lower bound for the probability of attaining these conditions increases with the number of support locations in the prior information set, and obtain the expression for the final probability of reconstruction under specific conditions. Our theoretical results are then compared to empirical probabilities obtained by Monte Carlo simulations. Finally, we present numerical reconstructions with and without prior information, as well as a simulation to illustrate how prior information can be used to improve reconstruction, for example, in the context of dynamic magnetic resonance imaging.
Keywords :
Monte Carlo methods; compressed sensing; probability; signal reconstruction; signal representation; stochastic processes; ℓ1-minimization; Monte Carlo simulation; compressive sensing; dynamic magnetic resonance imaging; information set; limited linear measurement; numerical reconstruction; probability; real-life signal; signal reconstruction; sparse representation; stochastic signal; Compressed sensing; Discrete Fourier transforms; Image reconstruction; Magnetic resonance imaging; Signal reconstruction; Time domain analysis; Vectors; Compressive sensing; irregular sampling; magnetic resonance imaging; prior information; sparse signals;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2012.2231076
Filename :
6374697
Link To Document :
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