# Image recognition - performance issue

I've got a performance problem in my matlab script.

What I'm trying to do is to find a horizontal line for which variance of intensity values along it is the smallest. The naive implementation is below. The question is how to rewrite it to boost performance.

``````% img is some previously loaded image
height = size(img,1);
width = size(img,2);

smallestVar = inf;
smallestXline = [];
smallestYline = [];

for i=1:height,
for j=1:width,
for k=i+1:height,
xline = [j j];
yline = [i k];
variance = var(improfile(img,xline,yline));
if variance < smallestVar
smallestVar = variance;
smallestXline = xline;
smallestYline = yline;
end
end
end
end
``````
-
You could definitely vectorize a lot of this code. I would start by profiling it first: mathworks.com/help/techdoc/ref/profile.html. The built-in MATLAB profiler is quite nice and will help you get started. However MATLAB code should always be vectorized when possible. See Maurits post. –  linuxuser27 Oct 31 '11 at 15:52

If it is just a horizontal line, i.e. all rows of a matrix, you can do it with:

``````sigma = var(matrix, 0, 2);
[val, idx] = sort(sigma, 'ascend');
``````

Where `val(1)` will contain the minimum variance and `idx(1)` the corresponding row index. If you are looking for any straight line to scan along, have a look at the so called Trace Transform.

-
``````[~, row] = min(var(img, 0, 2));