I have a 1028 by 18 matrix in matlab.I want to calculate the mean of 1st and 2nd row by column values,3rd and 4th and so on in Matlab and get a new matrix with the mean values.
I think you want to calculate the column-wise mean of every pair of rows. Reshape the array to be 2 x 18*1028/2, calculate the mean (which operates column-wise), and reshape the result to be 1028/2 x 18:
>> x = rand(1028, 18); >> result = reshape(x, 2, 1028/2*18); >> result = mean(result); >> result = reshape(result, 1028/2, 18);
A quick test to demonstrate the speed of vectorized solution compared to a for-loop over pairs of rows:
>> x = rand(1028, 18); >> tic; result1 = zeros(1028/2, 18); for ii = 1:1028/2; result1(ii,:) = mean(x((2*ii-1):(2*ii),:)); end; toc; Elapsed time is 0.022432 seconds. >> tic; result2 = reshape(x, 2, 1028/2*18); result2 = mean(result2); result2 = reshape(result2, 1028/2, 18); toc; Elapsed time is 0.000388 seconds.
I think what you are looking for is:
After running this,
The first row of
The second row of
The third row of
If you also want to exclude some of the rows from the averaging procedure based on the value of the first row, then you can add the following:
Building on excellent answers by b3 and cjh. This one is the fastest
Measured in a for loop for 2000 iterations
It is clear why. b3 uses function mean, which is not so good for performance if we just want to compute average of two numbers. On the other hand, clever reshapes make sure that we do not have to jump all over the memory during reading of the data, as is the case in the version of cjh. Hence, combining the best of the two solutions gives best results..