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State Space Modelling of Multiple Sinusoids in Noise

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Title: State Space Modelling of Multiple Sinusoids in Noise


1
State Space Modelling of Multiple Sinusoids in
Noise
  • Svante Stadler
  • Sound and Image Processing Lab
  • EE, KTH

2
State Space Modelling
  • this course the model is known
  • Real world model is often unknown, must be
    estimated
  • Speech and Audio model is estimated from data
    only
  • Estimation must be constrained (No Free Lunch
    etc)
  • Assumption signal sinusoids noise

3
Harmonic Estimation
  • The clean signal can be expressed as
  • Our goal is to minimize
  • which leads to ML estimates if noise is gaussian.
  • PROBLEM Nonlinear estimation, multiple minima,
    must search through parameter space

4
Harmonic Estimation
  • Trick first estimate a linear model, then
    estimate parameters from it
  • First done by Prony (1795!)
  • Linear models
  • Prediction polynomial
  • Power spectrum
  • Covariance Matrix
  • State space Model
  • Frequencies, Phases and Amplitudes are estimated
    from the Linear Model
  • Most work done is the 70s and 80s

5
Pisarenkos Method
  • Eigenvectors of Covariance Matrix are unaffected
    by additive white noise
  • All Eigenvalues are shifted up by noise variance
  • The smallest eigenvalue determines the noise
    variance and the corresponding eigenvector is the
    prediction polynomial for the clean signal
  • PRO Simple, accurate, fast
  • CON Model order must be known, sensitive to
    non-whiteness of noise

6
MUltiple SIgnal Classification (MUSIC)
  • Extension of Pisarenko approach
  • Makes use of redundancy when Covariance Matrix is
    larger than p1

7
Tufts and Kumaresan (TK)
  • Least Squares Linear Prediction is sensitive to
    noise
  • Apply SVD to data matrix and reduce rank to p

8
State Space Form
9
State Space Form
Linear prediction is identical to estimating
first row
10
State Space Form
  • Hankel matrix Y is factorized to estimate Model

11
State Space Form
  • When noise is present, F will not be in canonical
    form

12
State Space Form
  • PRO
  • Low parameter sensitivity
  • Yields amplitude and phase estimates along with
    frequency
  • Does not need large order
  • Synthesis filter is stable
  • CON
  • Matrix decompositions are computationally complex
  • Methods become complicated in some cases

13
Estimation Error
14
Adaptive Estimation
  • Sinusoids may change in frequency and amplitude
  • State Space Model can be updated using
    decomposition of data matrix, qgtp
  • No Forgetting Factor needed!

15
Efficient Methods
  • A filterbank can be used to separate harmonics
    (e.g. Chung and Fang, 1997)
  • One harmonic can be tracked at a time, then
    subtracted (e.g. Prandoni and Vetterli, 1998)
  • FFT can be used to find autocovariance
    (Wiener-Khinchin)

16
References
  • Pisarenko, V. F. The retrieval of harmonics from
    a covariance function, Geophysics, J. Roy.
    Astron. Soc., vol. 33, pp. 347-366, 1973.
  • Schmidt, R.O, Multiple Emitter Location and
    Signal Parameter Estimation, IEEE Trans.
    Antennas Propagation, Vol. AP-34 (March 1986),
    pp.276-280.
  • D. W. Tufts and R. Kumaresan, Estimation of
    frequencies of multiple sinusoids Making linear
    prediction work like maximum likelihood, Proc.
    IEEE, vol. 70, pp. 975-989, Sept. 1982.
  • S. Y. Kung, K.S. Arun, and D. V. BhaskarRao,
    State-space singular value decomposition based
    methods for the harmonic retrieval problem, J.
    Opt. Soc. Amer., vol. 73, pp. 1799-1811, Dec.
    1983.
  • D. B. Rao and K. Arun, Model based processing of
    signals A state space approach, Proc. IEEE,
    vol. 80, pp. 283--309, Feb. 1992.
  • K. S. Arun and M. Aung, Detection and tracking
    of superimposed non-stationary harmonics, Fifth
    ASSP Workshop on Spectrum Estimation and
    Modeling, pp. 173-177, Oct. 1990.
  • P. Prandoni and M. Vetterli, An FIR cascade
    structure for adaptive linear prediction, IEEE
    Transactions on Signal Processing, vol. 44, pp.
    16-31, Jan. 1998
  • Y. Chung and W. Fang, An efficient approach for
    the harmonic retrieval problem via Haar Wavelet
    Transform, IEEE Signal Processing Letters, vol.
    4, No. 12, pp. 331-334, Dec. 1997
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