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Sorry if the question has been asked before, can't find searching. I have an array of structures (about a 1000). Each struct has a field called "travelTime" which is a 3D matrix of size "120x92x150". I need to look up the value for a certain position for all 1000 matrices, for ex. index (60,46,75) so I would have an array with 1000 elements. I could do it in a for loop, but is there an easier and more elegant way (faster)?

Thanks, Kamran

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2 Answers 2

up vote 2 down vote accepted

To copy a nice answer from In Matlab, how can I sort the order of a nested structure? (thanks @Gunther-Struyf!):

Points = arrayfun(@(ii) myStruct(ii).travelTime(60,46,75),1:numel(myStruct));
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2  
+1 (although this is basically a loop-in-disguise) –  Rody Oldenhuis Jun 20 '13 at 9:30
    
Absolutely brilliant, thanks. –  user1641496 Jun 20 '13 at 9:34

Concatenate everything along a fourth dimension, retrieve all indices and then squeeze the result back into a column vector. For example, if your structure array is S, you can do this:

A = cat(4, S.travelTime);
points = squeeze(A(60, 46, 75, :));

Benchmarking

Let's benchmark the possible solutions:

M = reshape(1:18, 2, 3, 3);
for k = 1:100
    s(k).travelTime = mod(k, 6) * M;
end

tries = 1e4;

%// Vectorized solution
tic
for jj = 1:tries
    A = cat(4, s.travelTime);
    points = squeeze(A(1, 2, 1, :));
end
toc

%// For loop solution
tic
for jj = 1:tries
    points = zeros(size(s));
    for ii = 1:numel(s)
        points(ii) = s(ii).travelTime(1, 2, 1);
    end
end
toc

%// arrayfun solution
tic
for jj = 1:tries
    Points = arrayfun(@(ii)s(ii).travelTime(1, 2, 1), 1:numel(s));
end
toc

The results are:

Elapsed time is 0.072367 seconds.
Elapsed time is 0.890323 seconds.
Elapsed time is 1.08522 seconds.

Not surprisingly, the vectorized solution is the fastest and an arrayfun solution is the slowest.

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+1 and I would recommend the OP storing data as a 4 dimensional array in the first place. However, I am not sure this solution is faster (due to precedent MATLAB inefficiencies when dealing with > 2D array) but definitely more memory intensive. It would be nice to see a timing comparison between a simple loop, arrayfun and the cat index method. –  Oleg Komarov Jun 20 '13 at 9:34
1  
Thank you very much. Works great. –  user1641496 Jun 20 '13 at 9:35
    
@OlegKomarov Added the benchmark. –  Eitan T Jun 20 '13 at 9:48
    
Nice (can you add release and architecture?). –  Oleg Komarov Jun 20 '13 at 9:59
    
Except that (assuming double), in the OP's case, the 4D solution creates a 120*92*150*1000*8 / 1000^3 = 13GB temporary... –  Rody Oldenhuis Jun 20 '13 at 10:27

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