Subspace-based signal analysis using singular value decomposition

A unified approach is presented to the related problems of recovering signal parameters from noisy observations and identifying linear system model parameters from observed input/output signals, both using singular value decomposition (SVD) techniques. Both known and new SVD-based identification met...

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Veröffentlicht in:Proceedings of the IEEE 1993-09, Vol.81 (9), p.1277-1308
Hauptverfasser: Van Der Veen, A.-J., Deprettere, E.F., Swindlehurst, A.L.
Format: Artikel
Sprache:eng
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Zusammenfassung:A unified approach is presented to the related problems of recovering signal parameters from noisy observations and identifying linear system model parameters from observed input/output signals, both using singular value decomposition (SVD) techniques. Both known and new SVD-based identification methods are classified in a subspace-oriented scheme. The SVD of a matrix constructed from the observed signal data provides the key step in a robust discrimination between desired signals and disturbing signals in terms of signal and noise subspaces. The methods that are presented are distinguished by the way in which the subspaces are determined and how the signal or system model parameters are extracted from these subspaces. Typical examples, such as the direction-of-arrival problem and system identification from input/output measurements, are elaborated upon, and some extensions to time-varying systems are given.< >
ISSN:0018-9219
1558-2256
DOI:10.1109/5.237536