Okay, so I must say the sample K-means algo program provided by OpenCV is quite confusing. Even after spending the entire afternoon didn`t get the entire picture. These are a few questions I would like to ask:

1) How do I convert a given image to single column matrix, since K-means function takes only such matrix as input ? I know I have to use CvMat function, but can`t figure out how exactly.

2) Is it possible to cluster depending on the color intensity, using some pre-determined intensity as seed values ?

Last but not the least, it would be high;y appreciated if someone can provide with any link that explains K-means in a bit detail. I have already gone through the willowgarage and the aishack explanations, still doubts remain. Thanks in advance !!

This is exactly what I am trying to do: Suppose this is an image provided

Output of my code should be somewhat like this:

As you can see, in the second image effects due to shading are removed and we get an image with definite color layers.

Now for doing this I am applying the following method First I choose the seed colors based on the corresponding LAB values of the image. Then after obtaining the seed values I try to cluster the similar colors into a definite color layer using K-means clustering. (as shown in the figure above).