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I have wrote a program to analyse the multiple audio files, the algorithm is long, but now I have a result that I was expecting, the problem that is how to describ the similarity grad between the diffrent vectors that I've got : enter image description here enter image description here enter image description here

I know that the cross correlation is a way to do that, but I can't conclude from the result of :


anything I get a bunch of number that I can't interpret . so my question how can evaluate the similarity between the different curves, and please I'm asking for code too so I can understand, even if it one line.

thanks in advance for any help !

share|improve this question
up vote 1 down vote accepted

Use corrcoef and look at the off-diagonal value. For example:

>> x1 = 1:12;
>> x2 = 1:12;
>> c = corrcoef(x1,x2);
>> c(1,2)
ans =
     1 %// equal vectors

>> x2(end) = 13;
>> c = corrcoef(x1,x2);
>> c(1,2)
ans =
    0.9977 %// slightly different

>> x2 = rand(1,12);
>> c = corrcoef(x1,x2);
>> c(1,2)
ans =
    0.0349 %// hardly any correlation
share|improve this answer
thanks so much for your answer,just one question why should I look at c(2,1) ? – Engine May 23 '14 at 11:29
Because c(1,1) is similarity between x1 and x1, so it's always 1. You should look at c(1,2) or c(2,1) (they are the same, at least for real vectors) to measure similarity between both input arguments. c(2,2) is always 1 too – Luis Mendo May 23 '14 at 11:43
thanks again for your help! – Engine May 23 '14 at 11:45

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