# Classify points according to euclidean distance - optimize code

I have a matrix A consisting of 200 vectors of size d.

I want that a matrix B consisting of 4096 vectors gets classified to these points according to the nearest distance rule.

Thus the result should have rows of size B having the id number ( from 1 to 200 ) to which it belongs.

I have written this code via `2 for` loops and it takes lots of time for calculation.

``````for i = 1:4096
counter = 1;
vector1 = FaceImage(i,:);
vector2 = Centroids(1,:);
distance = pdist( [ vector1 ; vector2] , 'euclidean' );
for j = 2:200
vector2 = Centroids(j,:);
temp = pdist( [ vector1 ; vector2] , 'euclidean' );
if temp < distance
distance = temp;
counter = j;
end
end
Histogram( i ) = counter;
end
``````

Can somebody help me out increasing the efficiency of the above code ... or perhaps suggest me an inbuilt function ?

Thanks

-

Try out this

``````vector2 = Centroids(1,:);
vector = [ vector2 ; FaceImage ];
temp = pdist( vector , 'euclidean' );
answer = temp[1:4096];  % will contain first 4096 lines as distances between vector2 and rows of Face Image
Now you can find the minimum of these distances and that `row + 1` will be the vector that is closest to the point
``````
-

You can do this in one line with `pdist2`:

``````[~, Histogram] = pdist2( Centroids, FaceImage, 'euclidian', 'Smallest', 1);
``````

Timing for original code:

``````FaceImage = rand(4096, 100);
Centroids = rand(200, 100);

tic
toc

Elapsed time is 87.434877 seconds.
``````

Timing for my code:

``````tic
[~, Histogram_2] = pdist2( Centroids, FaceImage, 'euclidean', 'Smallest', 1);
toc

Elapsed time is 0.111736 seconds.
``````

Asserting the results are the same:

``````>> all(Histogram==Histogram_2)

ans =

1
``````
-
+1 for some evidence, it's too rare here on SO –  High Performance Mark Mar 26 '12 at 8:55