The purpose of this example is to show the features of multivariate denoising provided in Wavelet Toolbox™.

Multivariate wavelet denoising problems deal with models of the form

where the observation * X* is

To load the multivariate signal, type the following code at the MATLAB® prompt:

```
load ex4mwden
whos
```

Name Size Bytes Class Attributes covar 4x4 128 double x 1024x4 32768 double x_orig 1024x4 32768 double

Usually, only the matrix of data `x`

is available. Here, we also have the true noise covariance matrix `covar`

and the original signals `x_orig`

. These signals are noisy versions of simple combinations of the two original signals. The first signal is "Blocks" which is irregular, and the second one is "HeavySine" which is regular, except around time 750. The other two signals are the sum and the difference of the two original signals, respectively. Multivariate Gaussian white noise exhibiting strong spatial correlation is added to the resulting four signals, which produces the observed data stored in `x`

.

To display the original and observed signals, type:

kp = 0; for i = 1:4 subplot(4,2,kp+1), plot(x_orig(:,i)); axis tight; title(['Original signal ',num2str(i)]) subplot(4,2,kp+2), plot(x(:,i)); axis tight; title(['Observed signal ',num2str(i)]) kp = kp + 2; end

The true noise covariance matrix is given by:

covar

covar = 1.0000 0.8000 0.6000 0.7000 0.8000 1.0000 0.5000 0.6000 0.6000 0.5000 1.0000 0.7000 0.7000 0.6000 0.7000 1.0000

The denoising strategy combines univariate wavelet denoising in the basis, where the estimated noise covariance matrix is diagonal with noncentered Principal Component Analysis (PCA) on approximations in the wavelet domain or with final PCA.

First, perform univariate denoising by typing the following lines to set the denoising parameters:

level = 5; wname = 'sym4'; tptr = 'sqtwolog'; sorh = 's';

Then, set the PCA parameters by retaining all the principal components:

npc_app = 4; npc_fin = 4;

Finally, perform multivariate denoising by typing:

x_den = wmulden(x, level, wname, npc_app, npc_fin, tptr, sorh);

To display the original and denoised signals type the following:

clf kp = 0; for i = 1:4 subplot(4,3,kp+1), plot(x_orig(:,i)); axis tight; title(['Original signal ',num2str(i)]) subplot(4,3,kp+2), plot(x(:,i)); axis tight; title(['Observed signal ',num2str(i)]) subplot(4,3,kp+3), plot(x_den(:,i)); axis tight; title(['Denoised signal ',num2str(i)]) kp = kp + 3; end

We can see that, overall, the results are satisfactory. Focusing on the two first signals, note that they are correctly recovered, but we can improve the result by taking advantage of the relationships between the signals, leading to an additional denoising effect.

To automatically select the numbers of retained principal components using Kaiser's rule, which retains components associated with eigenvalues exceeding the mean of all eigenvalues, type:

npc_app = 'kais'; npc_fin = 'kais';

Perform multivariate denoising again by typing:

```
[x_den, npc, nestco] = wmulden(x, level, wname, npc_app, ...
npc_fin, tptr, sorh);
```

The second output argument `npc`

is the number of retained principal components for PCA for approximations and for final PCA.

npc

npc = 2 2

As expected, because the signals are combinations of two original signals, Kaiser's rule automatically detects that only two principal components are of interest.

The third output argument `nestco`

contains the estimated noise covariance matrix:

nestco

nestco = 1.0784 0.8333 0.6878 0.8141 0.8333 1.0025 0.5275 0.6814 0.6878 0.5275 1.0501 0.7734 0.8141 0.6814 0.7734 1.0967

As it can be seen by comparing it with the true matrix covar given previously, the estimation is satisfactory.

To display the original and final denoised signals type:

kp = 0; for i = 1:4 subplot(4,3,kp+1), plot(x_orig(:,i)); axis tight; title(['Original signal ',num2str(i)]) subplot(4,3,kp+2), plot(x(:,i)); axis tight; title(['Observed signal ',num2str(i)]) subplot(4,3,kp+3), plot(x_den(:,i)); axis tight; title(['Denoised signal ',num2str(i)]) kp = kp + 3; end

These results are better than those previously obtained. The first signal, which is irregular, is still correctly recovered, while the second signal, which is more regular, is better denoised after this second stage of PCA.

You can find more information about multivariate denoising, including some theory, simulations, and real examples, in the following reference:

M. Aminghafari, N. Cheze and J-M. Poggi (2006), "Multivariate denoising using wavelets and principal component analysis," Computational Statistics & Data Analysis, 50, pp. 2381-2398.

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