I want to implement K-means clustering for segmenting an image based on color intensity and actually i do not know how to get the segmented image and ROI after applying Core.kmeans function. I followed the steps in the question in here here but there is no answer to how to proceed from this point. Any help would be appreciated.
Thanks in advance.
This the code I am using based on different sources and actually it is not working
//convert to lab with three channels
Mat imgLab = new Mat();
Mat imgMat = new Mat();
Imgproc.cvtColor(imgMat, imgLab, Imgproc.COLOR_RGB2Lab, 3);
// separate channels
List<Mat> lab_planes = new ArrayList<Mat>(3);
Core.split(imgMat, lab_planes);
Mat channel = lab_planes.get(2);
channel = Mat.zeros(imgLab.rows(), imgLab.cols(), CvType.CV_8UC1);
// use only AB channels in Lab color space
lab_planes.set(2, channel);
Core.merge(lab_planes,imgLab);
Mat samples = imgLab.reshape(1, imgLab.cols() * imgLab.rows());
Mat samples32f = new Mat();
samples.convertTo(samples32f, CvType.CV_32F, 1.0 / 255.0);
Mat labels = new Mat();
TermCriteria criteria = new TermCriteria(TermCriteria.EPS + TermCriteria.MAX_ITER, 100, 1);
Mat centers = new Mat();
//Mat clusteredLab = new Mat();
int nColors = 3; //number of clusters (k)
int attempt = 3; //number of attempts
// repeat the clustering 3 times to avoid local minima
Core.kmeans(samples32f, nColors, labels, criteria, attempt, Core.KMEANS_PP_CENTERS, centers);
centers.convertTo(centers, CvType.CV_8UC1);
centers.reshape(3);
//the rest of code for RGB image not Lab
List<Mat> clusters = new ArrayList<Mat>();
for (int i = 0; i < centers.rows(); i++) {
clusters.add(Mat.zeros(samples.size(), samples.type()));
}
Map<Integer, Integer> counts = new HashMap<Integer, Integer>();
for (int i = 0; i < centers.rows(); i++) counts.put(i, 0);
int rows = 0;
for (int y = 0; y < samples.rows(); y++) {
for (int x = 0; x < samples.cols(); x++) {
int label = (int) labels.get(rows, 0)[0];
int r = (int) centers.get(label, 2)[0];
int g = (int) centers.get(label, 1)[0];
int b = (int) centers.get(label, 0)[0];
counts.put(label, counts.get(label) + 1);
clusters.get(label).put(y, x, b, g, r);
rows++;
}
}
return clusters;
}