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Signal Denoising with Wavelets

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Attenuation of the estimator, reduces the added noise ... Estimate noise variance from data using the median of the finest scale wavelet coefficients. ... – PowerPoint PPT presentation

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Title: Signal Denoising with Wavelets


1
Signal Denoising with Wavelets
2
Wavelet Threholding
  • Assume an additive model for a noisy signal,
    yfn
  • K is the covariance of the noise
  • Different options for noise
  • i.i.d
  • White
  • Most common model Additive white Gaussian noise

3
Wavelet transform of noisy signals
  • Wavelet transform of a noisy signal yields small
    coefficients that are dominated by noise, large
    coefficients carry more signal information.
  • White noise is spread out equally over all
    coefficients.
  • Wavelets have a decorrelation property.
  • Wavelet transform of white noise is white.

4
Wavelet transform of noisy signal
  • B(XfW)
  • ByBfBn
  • Covariance of noise
  • If B is orthogonal and W is white, i.i.d, SK.

5
Hard Thresholding vs. Soft Thresholding
  • Hard Thresholding Let BXu
  • Soft Thresholding

6
How to Choose the Threshold
  • Diagonal Estimation with Oracles A diagonal
    operator estimates each fB from XB.
  • Find am that minimizes the risk of the
    estimator

7
Threshold Selection
  • Since am depends on fB, this is not realizable
    in practice.
  • Simplify
  • Linear Projection am is either 1 or 0
  • Non-linear Projection Not practical
  • The risk of this projector

8
Hard Thresholding
  • Threshold the observed coefficients, not the
    underlying
  • Nonlinear projector
  • The risk is greater than equal to the risk of an
    oracle projector

9
Soft Thresholding
  • Attenuation of the estimator, reduces the added
    noise
  • Choose T appropriately such that the risk of
    thresholding is close to the risk of an oracle
    projector

10
Theorem (Donoho and Johnstone)
  • The risk of a hard/soft threshold estimator will
    satisfy
  • when

11
Thresholding Refinements
  • SURE Thresholds (Stein Unbiased Risk Estimator)
    Estimate the risk of a soft thresholding
    estimator, rt(f,T) from noisy data X
  • Estimate
  • The risk is

12
SURE
  • It can be shown that for soft thresholding, the
    risk estimator is unbiased.
  • To find the threshold that minimizes the SURE
    estimator, the N data coefficients are sorted in
    decreasing amplitude.
  • To minimize the risk, choose T the smallest
    possible,

13
Extensions
  • Estimate noise variance from data using the
    median of the finest scale wavelet coefficients.
  • Translation Invariant Averaging estimators for
    translated versions of the signal.
  • Adaptive (Multiscale) Thresholding Different
    thresholds for different scales
  • At low scale T should be smaller.
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