DocumentCode
34766
Title
Dynamic Compressive Sensing of Time-Varying Signals Via Approximate Message Passing
Author
Ziniel, Justin ; Schniter, Philip
Author_Institution
Dept. of Electr. & Comput. Eng., Ohio State Univ., Columbus, OH, USA
Volume
61
Issue
21
fYear
2013
fDate
Nov.1, 2013
Firstpage
5270
Lastpage
5284
Abstract
In this work the dynamic compressive sensing (CS) problem of recovering sparse, correlated, time-varying signals from sub-Nyquist, non-adaptive, linear measurements is explored from a Bayesian perspective. While there has been a handful of previously proposed Bayesian dynamic CS algorithms in the literature, the ability to perform inference on high-dimensional problems in a computationally efficient manner remains elusive. In response, we propose a probabilistic dynamic CS signal model that captures both amplitude and support correlation structure, and describe an approximate message passing algorithm that performs soft signal estimation and support detection with a computational complexity that is linear in all problem dimensions. The algorithm, DCS-AMP, can perform either causal filtering or non-causal smoothing, and is capable of learning model parameters adaptively from the data through an expectation-maximization learning procedure. We provide numerical evidence that DCS-AMP performs within 3 dB of oracle bounds on synthetic data under a variety of operating conditions. We further describe the result of applying DCS-AMP to two real dynamic CS datasets, as well as a frequency estimation task, to bolster our claim that DCS-AMP is capable of offering state-of-the-art performance and speed on real-world high-dimensional problems.
Keywords
Bayes methods; compressed sensing; frequency estimation; message passing; Bayesian dynamic CS algorithm; DCS-AMP; approximate message passing algorithm; correlated signal recovery; dynamic compressive sensing; expectation-maximization learning procedure; frequency estimation; learning model parameter; linear measurement; nonadaptive measurement; soft signal estimation; sparse signal recovery; sub-Nyquist measurement; time-varying signal recovery; Bayes methods; Correlation; Heuristic algorithms; Inference algorithms; Markov processes; Time series analysis; Vectors; Approximate message passing (AMP); Kalman filters; belief propagation; compressed sensing; dynamic compressive sensing; expectation-maximization algorithms; statistical signal processing; time-varying sparse signals;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2013.2273196
Filename
6557543
Link To Document