# Samples by samples cross-correlation(Xcorr) matlab

I am using the xcorr function for identifying the similarity of the signals. the following is the code,

``````r1 = max(abs(xcorr(S1, shat1,'coeff')));
r2 = max(abs(xcorr(S1,shat2,'coeff')));
if r1>r2
dn=shat2;
else
dn=shat1;
end
``````

It worked perfectly. But the problem is the signals are having 40,000 samples each. Practically I do get a lot of delay. I have to send bunch of samples (like 250samples)into the xcorr for getting rid of the delay. But how do I do that? I know that I have to use a for loop, but found difficult in doing that. Can some one suggest me how do I do that.I tried something like this

``````for i=1:250:40000
r1 = max(abs(xcorr(S1(:,i), shat1(:,i),'coeff')));
``````

but totally lost. Someone suggest something please....

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If I understand you correctly, you want to cross-correlate block of 250 samples, one after the other. Adapting from your attempt, try

``````for i=1:250:40000
r1 = max(abs(xcorr(S1(i:i+249), shat1(i:i+249),'coeff')));
end
``````

As a side note, do you know anything about the maximum lag between your signals? If you can safely assume that the temporal shift between your signals is below 250 (which the idea of splitting it into intervals suggests), you could save calculation time by modifying your original code with using `maxlags`, a parameter for xcorr:

``````maxlags=250; %# or some other reasonable value, maybe even 100? 50?
r1 = max(abs(xcorr(S1, shat1,maxlags, 'coeff')));
r2 = max(abs(xcorr(S1, shat2,maxlags, 'coeff')));
...
``````

I haven't tested how fast that would be, but my guess is you might be able to avoid your loop altogether with this...

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Hi, thanks for the idea. Will try this and I am not sure about the lag between the signals because they are the outputs of a particular algorithm. Thank you so much for the reply. –  jay Sep 8 '11 at 2:24