DocumentCode
1251883
Title
A new eigenstructure method for sinusoidal signal retrieval in white noise: estimation and pattern recognition
Author
Hu, Baogang ; Gosine, Raymond G.
Author_Institution
Centre for Cold Ocean Resources Eng., Memorial Univ. of Newfoundland, St. John´´s, Nfld., Canada
Volume
45
Issue
12
fYear
1997
fDate
12/1/1997 12:00:00 AM
Firstpage
3073
Lastpage
3083
Abstract
A new approach, in a framework of an eigenstructure method using a Hankel matrix, is developed for sinusoidal signal retrieval in white noise. A closed-form solution for the singular pairs of the matrix is defined in terms of the associated sinusoidal signals and noise. The estimated sinusoidal singular vectors are applied to form the noise-free Hankel matrix. A pattern recognition technique is proposed for partitioning signal and noise subspaces based on the singular pairs of the Hankel matrix. Three types of cluster structures in an eigen-spectrum plot are identified: well-separated, touching, and overlapping. The overlapping, which is the most difficult case, corresponds to a low signal-to noise ratio (SNR). Optimization of Hankel matrix dimensions is suggested for enhancing separability of cluster structures. Once features have been extracted from both singular value and singular vector data, a fuzzy classifier is used to identify each singular component. Computer simulations have shown that the method is effective for the case of “touching” data and provides reasonably good results for a sinusoidal signal reconstruction in the time domain. The limitations of the method are also discussed
Keywords
Hankel matrices; eigenstructure assignment; feature extraction; fuzzy set theory; interference (signal); optimisation; parameter estimation; signal reconstruction; time-domain analysis; white noise; Hankel matrix; closed-form solution; cluster structures; computer simulations; eigen-spectrum plot; eigenstructure method; estimation; fuzzy classifier; identification; low signal-to noise ratio; optimization; partitioning noise subspaces; partitioning signal subspaces; pattern recognition; pattern recognition technique; singular value data; singular vector data; sinusoidal signal reconstruction; sinusoidal signal retrieval; sinusoidal singular vectors; time domain; white noise; Closed-form solution; Computer simulation; Data mining; Eigenvalues and eigenfunctions; Feature extraction; Oceans; Pattern recognition; Phase estimation; Signal to noise ratio; White noise;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/78.650268
Filename
650268
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