How to normalize a signal to zero mean and unit variance?

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?

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(:));
• 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 '14 at 16:18
• \forall scalar a, std(x) == std(x+a) – Oli Mar 27 '14 at 4:47

If you have the stats toolbox, then you can compute

Z = zscore(S);

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.

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)

To avoid division by zero!

function x = normalize(x, eps)
% Normalize vector `x` (zero mean, unit variance)

% default values
if (~exist('eps', 'var'))
eps = 1e-6;
end

mu = mean(x(:));

sigma = std(x(:));
if sigma < eps
sigma = 1;
end

x = (x - mu) / sigma;
end