# zero mean and unit variance of a signal

I am new to matlab and i am trying to built a voice morphing system using matlab.

So I would like to know how to normalize a signal to zero mean and unit variance using matlab?

Thanks for the help in advance.

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possible duplicate of normalize mat file in matlab –  Jonas Jan 3 '12 at 19:05

if your signal is in the matrix `X`, you make it zero-mean by removing the average:

``````X=X-mean(X(:));
``````

and unit variance by dividing by the standard deviation:

``````X=X/std(X(:));
``````
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one remark/question @Oli, in your code, you're actually computing the `std` of the aligned/zero-mean data (x-mu), i.e: `std(x-mu)`, but it should be: `std(x)`, right? –  Tin Mar 25 at 16:18
\forall scalar a, std(x) == std(x+a) –  Oli Mar 27 at 4:47

You can determine the mean of the signal, and just subtract that value from all the entries. That will give you a zero mean result.

To get unit variance, determine the standard deviation of the signal, and divide all entries by that value.

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It seems like you are essentially looking into computing the z-score or standard score of your data, which is calculated through the formula: z = (x-mean(x))/std(x)

This should work:

``````%% Original data (Normal with mean 1 and standard deviation 2)
x = 1 + 2*randn(100,1);
mean(x)
var(x)
std(x)

%% Normalized data with mean 0 and variance 1
z = (x-mean(x))/std(x);
mean(z)
var(z)
std(z)
``````
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``````Z = zscore(S);