# Vectorizing code

I dont quite get the vectorizing way of thinking of matlab, mostly due to the simple examples provided in the documentation, and i hope someone can help me understand it a little better.

So, what i'm trying to accomplish is to take a sample of NxN from a matrix of ncols x nrows x ielements and compute the average for each ielement and store the maximum of the averages. Using for loops, the code would look like this:

``````for x = 1+margin : nrows-margin
for y = 1+margin : ncols-margin
for i=1:ielem
% take a NxN sample
sample = input_matrix(y-margin:y+margin,x-margin:x+margin,i)
% compute the average of all elements
result(i) = mean2(sample);
end %for i
% store the max of the computed averages
output_matrix(y,x)=max(result);
end %for y
end %for x
``````

can anyone do a good vectorization of this example of a situation ? T

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You should probably look at the `conv2` or `filter2` functions. – Oliver Charlesworth Mar 19 '12 at 14:36
I will, but is there any other way to vectorize this type of code withouth using functions like conv2 or filter2 and do it using more matrix indexing? – VisLab Mar 19 '12 at 14:45

``````input=randn(5,5,3);
Basically, the inner two `mean` take the mean of the input array, and the outer `max` will find the maximum value over the range. If you want, you can break it out step by step, and see what it does. The `mean(input,1)` will take the mean over the first dimension, `mean(input,2)` over the second, etc. After the first two means are done, all that is left is a vector, which the max function will easily work. It should be noted that the size of the vector pre-max is [1 1 3], the dimensions are preserved when doing this operation.