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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
      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

First of all, vectorization is not as important as it once was, due to enhancements in compiling the code before it is ran, but it's still a very common practice and can lead to some enhancements. Older Matlab version executed one line at a time, which would leave a for loop much slower than a vectorized version of the same code.

The part of your matrix that could be vectorized is the inner more for loop. I'll show a simple example of what you are trying to do, I'll let you take the example and put it into your code.


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.

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