DocumentCode :
1002912
Title :
Sampling and reconstruction of signals with finite rate of innovation in the presence of noise
Author :
Maravic, Irena ; Vetterli, Martin
Author_Institution :
Electr. Eng. & Comput. Sci. Dept., Univ. of California, Berkeley, CA, USA
Volume :
53
Issue :
8
fYear :
2005
Firstpage :
2788
Lastpage :
2805
Abstract :
Recently, it was shown that it is possible to develop exact sampling schemes for a large class of parametric nonbandlimited signals, namely certain signals of finite rate of innovation. A common feature of such signals is that they have a finite number of degrees of freedom per unit of time and can be reconstructed from a finite number of uniform samples. In order to prove sampling theorems, Vetterli et al. considered the case of deterministic, noiseless signals and developed algebraic methods that lead to perfect reconstruction. However, when noise is present, many of those schemes can become ill-conditioned. In this paper, we revisit the problem of sampling and reconstruction of signals with finite rate of innovation and propose improved, more robust methods that have better numerical conditioning in the presence of noise and yield more accurate reconstruction. We analyze, in detail, a signal made up of a stream of Diracs and develop algorithmic tools that will be used as a basis in all constructions. While some of the techniques have been already encountered in the spectral estimation framework, we further explore preconditioning methods that lead to improved resolution performance in the case when the signal contains closely spaced components. For classes of periodic signals, such as piecewise polynomials and nonuniform splines, we propose novel algebraic approaches that solve the sampling problem in the Laplace domain, after appropriate windowing. Building on the results for periodic signals, we extend our analysis to finite-length signals and develop schemes based on a Gaussian kernel, which avoid the problem of ill-conditioning by proper weighting of the data matrix. Our methods use structured linear systems and robust algorithmic solutions, which we show through simulation results.
Keywords :
Gaussian processes; algebra; noise; piecewise polynomial techniques; signal reconstruction; signal resolution; signal sampling; singular value decomposition; splines (mathematics); Gaussian kernel; Laplace domain; algebraic method; annihilating filter; finite innovation rate; finite-length signal; noiseless signal; nonuniform splines; parametric nonbandlimited signal; piecewise polynomial; preconditioning method; signal reconstruction scheme; signal resolution; signal sampling scheme; singular value decomposition; spectral estimation framework; Algorithm design and analysis; Buildings; Kernel; Linear systems; Noise robustness; Polynomials; Sampling methods; Signal analysis; Signal resolution; Technological innovation; Annihilating filters; generalized sampling; nonbandlimited signals; nonuniform splines; piecewise polynomials; rate of innovation; singular value decomposition;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2005.850321
Filename :
1468473
Link To Document :
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