Title :
Compressed sensing of time-varying signals
Author :
Angelosante, D. ; Giannakis, G.B. ; Grossi, E.
Author_Institution :
Dept. of ECE, Univ. of Minnesota, Minneapolis, MN, USA
Abstract :
Compressed sensing (CS) lowers the number of measurements required for reconstruction and estimation of signals that are sparse when expanded over a proper basis. Traditional CS approaches deal with time-invariant sparse signals, meaning that, during the measurement process, the signal of interest does not exhibit variations. However, many signals encountered in practice are varying with time as the observation window increases (e.g., video imaging, where the signal is sparse and varies between different frames). The present paper develops CS algorithms for time-varying signals, based on the least-absolute shrinkage and selection operator (Lasso) that has been popular for sparse regression problems. The Lasso here is tailored for smoothing time-varying signals, which are modeled as vector valued discrete time series. Two algorithms are proposed: the group-fused Lasso, when the unknown signal support is time-invariant but signal samples are allowed to vary with time; and the dynamic Lasso, for the general class of signals with time-varying amplitudes and support. Performance of these algorithms is compared with a sparsity-unaware Kalman smoother, a support-aware Kalman smoother, and the standard Lasso which does not account for time variations. The numerical results amply demonstrate the practical merits of the novel CS algorithms.
Keywords :
data compression; regression analysis; signal reconstruction; signal sampling; smoothing methods; time series; time-varying filters; compressed sensing algorithm; dynamic Lasso; group-fused Lasso; least-absolute shrinkage; selection operator; signal estimation; signal sampling; sparse regression problem; sparsity-unaware Kalman smoother; time-varying amplitude; time-varying signal smoothing; time-varying sparse signal reconstruction; vector valued discrete time series; Collaboration; Compressed sensing; Constraint optimization; Estimation; Government; Image reconstruction; Kalman filters; Signal processing; Signal sampling; Smoothing methods; Compressed Sensing; Fused Lasso; Group Lasso; Lasso; Smoothing; Tracking;
Conference_Titel :
Digital Signal Processing, 2009 16th International Conference on
Conference_Location :
Santorini-Hellas
Print_ISBN :
978-1-4244-3297-4
Electronic_ISBN :
978-1-4244-3298-1
DOI :
10.1109/ICDSP.2009.5201168