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ClassImgFieldsDetector.java
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ClassImgFieldsDetector.java
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package org.genericsystem.cv;
import java.io.File;
import java.util.ArrayList;
import java.util.Arrays;
import java.util.Collections;
import java.util.List;
import java.util.stream.Collectors;
import org.opencv.core.Core;
import org.opencv.core.CvType;
import org.opencv.core.Mat;
import org.opencv.core.MatOfPoint;
import org.opencv.core.Rect;
import org.opencv.core.Scalar;
import org.opencv.core.Size;
import org.opencv.imgcodecs.Imgcodecs;
import org.opencv.imgproc.Imgproc;
import javafx.scene.control.Label;
import javafx.scene.layout.GridPane;
import javafx.scene.layout.VBox;
public class ClassImgFieldsDetector extends AbstractApp {
static {
System.loadLibrary(Core.NATIVE_LIBRARY_NAME);
}
private final static String classImgRepertory = "aligned-image-3.png";
private final static String adjustedDirectoryPath2 = "aligned-image-3.png/mask/image-3";
public static void main(String[] args) {
launch(args);
}
@Override
protected void fillGrid(GridPane mainGrid) {
int columnIndex = 0;
int rowIndex = 0;
ImgClass imgClass = ImgClass.fromDirectory(classImgRepertory);
mainGrid.add(buildImageViewFromMat(imgClass.getAverage()), columnIndex, rowIndex++);
mainGrid.add(buildImageViewFromMat(imgClass.getVariance()), columnIndex, rowIndex++);
mainGrid.add(buildImageViewFromMat(imgClass.computeBluredVariance(new Size(15, 15))), columnIndex, rowIndex++);
mainGrid.add(buildImageViewFromMat(imgClass.computeRangedMean(new Scalar(0, 0, 0), new Scalar(220, 180, 230), true, true)), columnIndex, rowIndex++);
mainGrid.add(buildImageViewFromMat(imgClass.computeRangedVariance(new Scalar(0, 0, 0), new Scalar(255, 255, 60), true)), columnIndex, rowIndex++);
mainGrid.add(buildImageViewFromMat(highlight(imgClass.computeRangedVariance(new Scalar(0, 0, 0), new Scalar(255, 255, 60), true), 40)), columnIndex, rowIndex++);
List<Rect> zones = getRectZones(highlight(imgClass.computeRangedVariance(new Scalar(0, 0, 0), new Scalar(255, 255, 80), true), 30));
// List<Rect> zones = getRectZones(highlight(imgClass.computeRangedMean(new Scalar(220, 0, 0), new Scalar(240, 180, 230), true, true), 1));
List<Mat> bluredMats = getClassMats(adjustedDirectoryPath2);
for (Mat mat : bluredMats) {
List<String> ocrs = new ArrayList<>();
for (Rect rect : zones) {
String s = Ocr.doWork(new Mat(mat, rect).clone());
ocrs.add(s = s.replace("\n", "").trim());
System.out.println(s);
Imgproc.rectangle(mat, rect.tl(), rect.br(), new Scalar(0, 255, 0), 3);
// Imgproc.putText(mat, s, new Point(rect.tl().x, rect.br().y), Core.FONT_HERSHEY_PLAIN, 1.8, new Scalar(0, 0, 255), 2);
}
mainGrid.add(buildImageViewFromMat(mat), columnIndex, rowIndex);
VBox vbox = new VBox();
ocrs.forEach(ocr -> vbox.getChildren().add(new Label(ocr)));
mainGrid.add(vbox, columnIndex + 1, rowIndex++);
break;
}
columnIndex++;
columnIndex++;
rowIndex = 0;
}
private List<Mat> getClassMats(String repository) {
return Arrays.stream(new File(repository).listFiles()).filter(img -> img.getName().endsWith(".png")).map(img -> Imgcodecs.imread(img.getPath())).collect(Collectors.toList());
}
private Mat getVariance(List<Mat> mats) {
Mat average = adjust(mats.get(0));
Mat nVariance = new Mat(average.size(), CvType.CV_32S, new Scalar(0, 0, 0));
for (int n = 1; n < 10 * mats.size(); n++)
computeImage(average, nVariance, adjust(mats.get(n % mats.size())), n + 1);
return normalize(nVariance, mats.size());
}
private Mat normalize(Mat nVariance, int n) {
Mat variance = new Mat();
Core.multiply(nVariance, new Scalar(1 / Integer.valueOf(n).doubleValue()), variance);
Core.convertScaleAbs(variance, variance);
return variance;
}
private Mat highlight(Mat variance, double highlight) {
Mat superVariance = new Mat();
Imgproc.cvtColor(variance, superVariance, Imgproc.COLOR_BGR2GRAY);
Core.multiply(superVariance, new Scalar(highlight), superVariance);
Imgproc.dilate(superVariance, superVariance, Imgproc.getStructuringElement(Imgproc.MORPH_CROSS, new Size(17, 3)));
Imgproc.GaussianBlur(superVariance, superVariance, new Size(17, 3), 0);
return superVariance;
}
private static void computeImage(Mat average, Mat nVariance, Mat adjusted, int n) {
Mat mask = Mat.ones(nVariance.size(), CvType.CV_8U);
Mat delta = new Mat(nVariance.size(), CvType.CV_32S);
Core.subtract(adjusted, average, delta, mask, CvType.CV_32S);
Core.addWeighted(average, 1, delta, 1 / Integer.valueOf(n).doubleValue(), 0, average, average.type());
Mat delta2 = new Mat(nVariance.size(), CvType.CV_32S);
Core.subtract(adjusted, average, delta2, mask, CvType.CV_32S);
Mat product = delta.mul(delta2);
Core.add(nVariance, product, nVariance);
}
public static Mat adjust(Mat frame) {
Mat mask = new Mat();
Core.inRange(frame, new Scalar(0, 0, 0), new Scalar(80, 255, 255), mask);
Mat masked = new Mat();
frame.copyTo(masked, mask);
Mat grey = new Mat();
Imgproc.cvtColor(masked, grey, Imgproc.COLOR_BGR2GRAY);
return grey;
}
public static List<Rect> getRectZones(Mat highlightVariance) {
// To improve
List<Rect> result = new ArrayList<>();
List<MatOfPoint> contours = new ArrayList<>();
Imgproc.findContours(highlightVariance, contours, new Mat(), Imgproc.RETR_EXTERNAL, Imgproc.CHAIN_APPROX_SIMPLE);
double minArea = 500;
Collections.sort(contours, (c1, c2) -> Double.compare(Imgproc.contourArea(c2), Imgproc.contourArea(c1)));
for (int i = 0; i < contours.size(); i++) {
MatOfPoint contour = contours.get(i);
double contourarea = Imgproc.contourArea(contour);
if (contourarea > minArea)
result.add(Imgproc.boundingRect(contour));
}
return result;
}
// private Mat equalizeHisto(Mat mat) {
// Mat result = new Mat();
// Imgproc.cvtColor(mat, result, Imgproc.COLOR_BGR2YCrCb);
// List<Mat> channels = new ArrayList<Mat>();
// Core.split(result, channels);
// Imgproc.equalizeHist(channels.get(0), channels.get(0));
// // Imgproc.equalizeHist(channels.get(1), channels.get(1));
// // Imgproc.equalizeHist(channels.get(2), channels.get(2));
// Core.merge(channels, result);
// Imgproc.cvtColor(result, result, Imgproc.COLOR_YCrCb2BGR);
// return result;
// }
//
// private Mat prepareOcr(Mat mat) {
// // Mat tmp = new Mat();
// // Imgproc.blur(mat, tmp, new Size(3, 3));
// // Mat tmp = equalizeHisto(mat);
// // Mat tmp = Kmeans.colorMapKMeans(mat, 7);
// // Mat tmp = new Mat();
// // Imgproc.blur(tmp, tmp, new Size(3, 3));
// // Imgproc.cvtColor(mat, tmp, Imgproc.COLOR_BGR2GRAY);
// // / Imgproc.adaptiveThreshold(tmp, tmp, 255, Imgproc.ADAPTIVE_THRESH_GAUSSIAN_C, Imgproc.THRESH_BINARY, 11, 2);
// // Imgproc.threshold(tmp, tmp, 0, 255, Imgproc.THRESH_BINARY + Imgproc.THRESH_OTSU);
// // Mat result = new Mat();
// // Imgproc.cvtColor(tmp, tmp, Imgproc.COLOR_GRAY2BGR);
// return mat;
// }
}