I'm using OpenCV's python interface to do K-Means clustering of multidimensional data (usually dimension of 7). I'm getting strange results for the clusters. When requesting n-clusters (index 0 to n) some clusters don't have points assigned to them - which results in less clusters than expected. Has someone successfully used the python K-Means implementation of OpenCV? Some user experience or advice would be most helpful.
Here is a code snippet of my python implementation:
points = cv.CreateMat(dim1, dim2, cv.CV_32FC2) clusters = cv.CreateMat(dim1, 1, cv.CV_32SC1) for a in range(0,dim0): for b in range(0,dim1): for c in range(0,dim2): #print float(list[a*dim1*dim2 + b*dim2 + c]) cv.Set2D( points, b, c, float(list[a*dim1*dim2 + b*dim2 + c]) ) cv.KMeans2(points, numClusters, clusters, (cv.CV_TERMCRIT_EPS + cv.CV_TERMCRIT_ITER, 100000, 0.00000001), 50) for d in range(0,dim1): f.write(str(int(clusters[d,0]))) f.write(' ') f.write('\n')