# Find Audio Peaks in MATLAB [closed]

I have an audio signal of about the size `7000000 x 1`. I have used the `peakfinder` m file in MATLAB to find the location of all of the peaks in the audio file above a specific threshold. I am now trying to find a frame sized `1000000 x 1` that contains the greatest amount of peaks. I am completely lost on how to do this and any help would be greatly appreciated. Thank you!

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## closed as off-topic by Eitan T, brasofilo, talonmies, Yotam Omer, zhangyangyuJul 23 '13 at 11:28

This question appears to be off-topic. The users who voted to close gave this specific reason:

• "Questions asking for code must demonstrate a minimal understanding of the problem being solved. Include attempted solutions, why they didn't work, and the expected results. See also: Stack Overflow question checklist" – Eitan T, brasofilo, talonmies, Yotam Omer, zhangyangyu
If this question can be reworded to fit the rules in the help center, please edit the question.

Well, all the peak finder function is doing is taking the second derivative and looking for any place where the resulting value is negative. This indicates a local maximum. So you can do something very similar to find any local maximum.

Once you have these indices, you can window the array containing a logical representation of the locations, and count how many peaks are there.

The code below will do what I am saying. It will window across and count the number of peaks found, and return a a vector of the counts, which you can then just find the max of, and then you have the starting index.

``````clc; close all; clear all;
A = randi(10,[1,100])
plot(A)
hold on
C = diff(diff(A))
indices = find(C < 0)+1;
scatter(indices,A(indices),'r')
temp = zeros(size(A));
temp(indices) = 1;
window = ones(1,5);
results = conv(temp,window,'same');
max(results)
``````

This is of course a pet example, A would be your matrix, and window would be a matrix the length of the range you want to examine, in your case 1000000

Edit

As Try Hard has made note of in the comments below, this method will be fairly susceptible to noise, so what you can do first is run a smoothing filter over the signal before doing any derivatives, something like as follows.

``````filt = (1/filtLength) * ones(1,filtLength);
A = conv(A,filt,'same')
``````

This is a simple averaging filter which will help smooth out some of the noise

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You may want to apply a filter first to smooth the data, otherwise you may miss the forest. – Try Hard Jul 22 '13 at 17:33
I am not sure I know what you mean. – MZimmerman6 Jul 22 '13 at 17:38
I know what a filter is and how to smooth it but what do you mean by missing the forest – MZimmerman6 Jul 22 '13 at 17:39
Figure of speech - you'll miss the signal for the noise. In your case of pure noise I don't know that this would help! :) It also is not relevant to the question, which asked how to find the region with most peaks, which you accomplish with conv. – Try Hard Jul 22 '13 at 17:40
I know it can't but if you are truly concerned you can threshold before you even do any derivative. something as simple as `temp = A(A > threshold); diff(diff(temp))` – MZimmerman6 Jul 22 '13 at 17:45