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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

enter image description here

Output of my code should be somewhat like this:

enter image description here

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).

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What exactly are you trying to do with KMeans and an Image? What are the expected results (logically?)? –  penelope Jun 15 '12 at 13:31
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1 Answer

 //Aim:To implement Kmeans clustering algorithm.
    //Program
    import java.util.*;
    class k_means
    {
    static int count1,count2,count3;
    static int d[];
    static int k[][];
    static int tempk[][];
    static double m[];
    static double diff[];
    static int n,p;

    static int cal_diff(int a) // This method will determine the cluster in which an element go at a particular step.
    {
    int temp1=0;
    for(int i=0;i<p;++i)
    {
    if(a>m[i])
    diff[i]=a-m[i];
    else
    diff[i]=m[i]-a;
    }
    int val=0;
    double temp=diff[0];
    for(int i=0;i<p;++i)
    {
    if(diff[i]<temp)
    {
    temp=diff[i];
    val=i;
    }
    }//end of for loop
    return val;
    }

    static void cal_mean() // This method will determine intermediate mean values
    {
    for(int i=0;i<p;++i)
    m[i]=0; // initializing means to 0
    int cnt=0;
    for(int i=0;i<p;++i)
    {
    cnt=0;
    for(int j=0;j<n-1;++j)
    {
    if(k[i][j]!=-1)
    {
    m[i]+=k[i][j];
    ++cnt;
    }}
    m[i]=m[i]/cnt;
    }
    }

    static int check1() // This checks if previous k ie. tempk and current k are same.Used as terminating case.
    {
    for(int i=0;i<p;++i)
    for(int j=0;j<n;++j)
    if(tempk[i][j]!=k[i][j])
    {
    return 0;
    }
    return 1;
    }

    public static void main(String args[])
    {
    Scanner scr=new Scanner(System.in);
    /* Accepting number of elements */
    System.out.println("Enter the number of elements ");
    n=scr.nextInt();
    d=new int[n];
    /* Accepting elements */
    System.out.println("Enter "+n+" elements: ");
    for(int i=0;i<n;++i)
    d[i]=scr.nextInt();
    /* Accepting num of clusters */
    System.out.println("Enter the number of clusters: ");
    p=scr.nextInt();
    /* Initialising arrays */
    k=new int[p][n];
    tempk=new int[p][n];
    m=new double[p];
    diff=new double[p];
    /* Initializing m */
    for(int i=0;i<p;++i)
    m[i]=d[i];

    int temp=0;
    int flag=0;
    do
    {
    for(int i=0;i<p;++i)
    for(int j=0;j<n;++j)
    {
    k[i][j]=-1;
    }
    for(int i=0;i<n;++i) // for loop will cal cal_diff(int) for every element.
    {
    temp=cal_diff(d[i]);
    if(temp==0)
    k[temp][count1++]=d[i];
    else
    if(temp==1)
    k[temp][count2++]=d[i];
    else
    if(temp==2)
    k[temp][count3++]=d[i]; 
    }
    cal_mean(); // call to method which will calculate mean at this step.
    flag=check1(); // check if terminating condition is satisfied.
    if(flag!=1)
    /*Take backup of k in tempk so that you can check for equivalence in next step*/
    for(int i=0;i<p;++i)
    for(int j=0;j<n;++j)
    tempk[i][j]=k[i][j];

    System.out.println("\n\nAt this step");
    System.out.println("\nValue of clusters");
    for(int i=0;i<p;++i)
    {
    System.out.print("K"+(i+1)+"{ ");
    for(int j=0;k[i][j]!=-1 && j<n-1;++j)
    System.out.print(k[i][j]+" ");
    System.out.println("}");
    }//end of for loop
    System.out.println("\nValue of m ");
    for(int i=0;i<p;++i)
    System.out.print("m"+(i+1)+"="+m[i]+"  ");

    count1=0;count2=0;count3=0;
    }
    while(flag==0);

    System.out.println("\n\n\nThe Final Clusters By Kmeans are as follows: ");
    for(int i=0;i<p;++i)
    {
    System.out.print("K"+(i+1)+"{ ");
    for(int j=0;k[i][j]!=-1 && j<n-1;++j)
    System.out.print(k[i][j]+" ");
    System.out.println("}");
    }
    }
    }
    /*
    Enter the number of elements
    8
    Enter 8 elements:
    2 3 6 8 12 15 18 22
    Enter the number of clusters:
    3

    At this step
    Value of clusters
    K1{ 2 }
    K2{ 3 }
    K3{ 6 8 12 15 18 22 }
    Value of m
    m1=2.0  m2=3.0  m3=13.5

    At this step
    Value of clusters
    K1{ 2 }
    K2{ 3 6 8 }
    K3{ 12 15 18 22 }
    Value of m
    m1=2.0  m2=5.666666666666667  m3=16.75

    At this step
    Value of clusters
    K1{ 2 3 }
    K2{ 6 8 }
    K3{ 12 15 18 22 }
    Value of m
    m1=2.5  m2=7.0  m3=16.75

    At this step
    Value of clusters
    K1{ 2 3 }
    K2{ 6 8 }
    K3{ 12 15 18 22 }
    Value of m
    m1=2.5  m2=7.0  m3=16.75

    The Final Clusters By Kmeans are as follows:
    K1{ 2 3 }
    K2{ 6 8 }
    K3{ 12 15 18 22 } */
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try to format your answer. It increases the chances of getting answer accepted quickly. Please refer the docs for formatting an answer. –  Bhavik Shah Nov 22 '13 at 5:45
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