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I profiled my code and found that this particular function is taking too much time.Any suggestions as to how do I improve this code?

function s = compute_distance_hist(h1,h2)
    s = sum(sum(sum(sqrt(h1).*sqrt(h2))));

This function calculates histogram distance.

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Is it possible that you are calling this function to often? Or could you precompute say the sqrt outside of the loop in which this gets called? – Dan Feb 28 '13 at 14:24

You can save one square root by doing sqrt(h1.*h2) in the most inner parentheses.

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A bit more elegant way is

sum( sqrt( h1(:).*h2(:) ) )

I'm not sure if it's faster though...

One more thing, If the source of trouble is the fact the compute_distance_hist is called MANY times, you might want to try and convert it into a function handle to be used instead of calling it explicitly.

For example, instead of

while someCondition
    % computations...
    s = compute_distance_hist( a, b );
    % more computations

How about

compute_distance_hist = @( h1, h2 ) sum( sqrt( h1(:).*h2(:) ) );
while someCondition
   % computation
    s = compute_distance_hist( a, b );
    % more computations
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When talking of speed, anonymous functions are a bad choice. In a benchmark simulation on [ function call overhead in Matlab/C/Python ] it has turned out that the call of anonymous functions are two times slower than calling a function defined in a seperate or better the same m-file. – Jan Feb 28 '13 at 15:03
@Jan - very interesting source. thanks! – Shai Feb 28 '13 at 15:07

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