I have two matrices A and B. Each of them has 2 columns having the coordinates of a point `( x , y )`

.

I need to compute a `mapping of points from A to B`

such that the points have least euclidean distance among them.

Essentially I am trying to emulate what sift does on images but will not carry out the steps that sift does for matching the points...

Thus for all points in A, I compute euclidean distance with all points in B and then remove the mapping of 2 points which have the least distance. Then i continue to do this until A and B are both empty.

Could someone tell me what could be the most efficient way of doing this ?

EDIT

Can somebody help me ... The issue I am facing is that I need to compute all v/s all distances before selecting the minimum of them as the first mapping. Then I need to do this all over again making the computation really long...

Is there any way this can be done efficiently in MATLAB ?