List of usage examples for org.opencv.imgproc Imgproc adaptiveThreshold
public static void adaptiveThreshold(Mat src, Mat dst, double maxValue, int adaptiveMethod, int thresholdType, int blockSize, double C)
From source file:ImagetoPDF.java
public static void enhance(String fileName) throws IOException { Mat source = Imgcodecs.imread(fileName, Imgcodecs.CV_LOAD_IMAGE_COLOR); Mat destination = new Mat(source.rows(), source.cols(), source.type()); // Imgproc.cvtColor(source, destination, Imgproc.COLOR_BGR2GRAY); Imgproc.cvtColor(source, source, Imgproc.COLOR_BGR2GRAY); Mat imageMat = source;/*w w w . ja v a 2 s . co m*/ Imgproc.GaussianBlur(imageMat, imageMat, new Size(3, 3), 0); Imgproc.adaptiveThreshold(imageMat, imageMat, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 5, 4); Imgcodecs.imwrite(fileName, imageMat); }
From source file:OCV_AdaptiveThreshold.java
License:Open Source License
@Override public void run(ImageProcessor ip) { int imw = ip.getWidth(); int imh = ip.getHeight(); // srcdst/*from w ww .j a va 2 s . c o m*/ byte[] srcdst_ar = (byte[]) ip.getPixels(); // mat Mat src_mat = new Mat(imh, imw, CvType.CV_8UC1); Mat dst_mat = new Mat(imh, imw, CvType.CV_8UC1); // run src_mat.put(0, 0, srcdst_ar); Imgproc.adaptiveThreshold(src_mat, dst_mat, maxValue, INT_ADAPTIVEMETHOD[indMethod], INT_THRESHOLDTYPE[indType], blockSize, subC); dst_mat.get(0, 0, srcdst_ar); }
From source file:LicenseDetection.java
public void run() { // ------------------ set up tesseract for later use ------------------ ITesseract tessInstance = new Tesseract(); tessInstance.setDatapath("/Users/BradWilliams/Downloads/Tess4J"); tessInstance.setLanguage("eng"); // ------------------ Save image first ------------------ Mat img;//from w w w.j a v a2s . c om img = Imgcodecs.imread(getClass().getResource("/resources/car_2_shopped2.jpg").getPath()); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/True_Image.png", img); // ------------------ Convert to grayscale ------------------ Mat imgGray = new Mat(); Imgproc.cvtColor(img, imgGray, Imgproc.COLOR_BGR2GRAY); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/Gray.png", imgGray); // ------------------ Blur so edge detection wont pick up noise ------------------ Mat imgGaussianBlur = new Mat(); Imgproc.GaussianBlur(imgGray, imgGaussianBlur, new Size(3, 3), 0); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/gaussian_blur.png", imgGaussianBlur); // ****************** Create image that will be cropped at end of program before OCR *************************** // ------------------ Binary theshold for OCR (used later)------------------ Mat imgThresholdOCR = new Mat(); Imgproc.adaptiveThreshold(imgGaussianBlur, imgThresholdOCR, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 7, 10); //Imgproc.threshold(imgSobel,imgThreshold,120,255,Imgproc.THRESH_TOZERO); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgThresholdOCR.png", imgThresholdOCR); // ------------------ Erosion operation------------------ Mat kern = Imgproc.getStructuringElement(Imgproc.CV_SHAPE_CROSS, new Size(3, 3)); Mat imgErodeOCR = new Mat(); Imgproc.morphologyEx(imgThresholdOCR, imgErodeOCR, Imgproc.MORPH_DILATE, kern); //Imgproc.MORPH_DILATE is performing erosion, wtf? Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgErodeOCR.png", imgErodeOCR); //------------------ Dilation operation ------------------ Mat kernall = Imgproc.getStructuringElement(Imgproc.CV_SHAPE_RECT, new Size(3, 3)); Mat imgDilateOCR = new Mat(); Imgproc.morphologyEx(imgErodeOCR, imgDilateOCR, Imgproc.MORPH_ERODE, kernall); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgDilateOCR.png", imgDilateOCR); // ************************************************************************************************************* // // ------------------ Close operation (dilation followed by erosion) to reduce noise ------------------ // Mat k = Imgproc.getStructuringElement(Imgproc.CV_SHAPE_RECT, new Size(3, 3)); // Mat imgCloseOCR = new Mat(); // Imgproc.morphologyEx(imgThresholdOCR,imgCloseOCR,1,k); // Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgCloseOCR.png", imgCloseOCR); // ------------------ Sobel vertical edge detection ------------------ Mat imgSobel = new Mat(); Imgproc.Sobel(imgGaussianBlur, imgSobel, -1, 1, 0); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgSobel.png", imgSobel); // ------------------ Binary theshold ------------------ Mat imgThreshold = new Mat(); Imgproc.adaptiveThreshold(imgSobel, imgThreshold, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 99, -60); //Imgproc.threshold(imgSobel,imgThreshold,120,255,Imgproc.THRESH_TOZERO); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgThreshold.png", imgThreshold); // // ------------------ Open operation (erosion followed by dilation) ------------------ // Mat ker = Imgproc.getStructuringElement(Imgproc.CV_SHAPE_CROSS, new Size(3, 2)); // Mat imgOpen = new Mat(); // Imgproc.morphologyEx(imgThreshold,imgOpen,0,ker); // Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgOpen.png", imgOpen); // ------------------ Close operation (dilation followed by erosion) to reduce noise ------------------ Mat kernel = Imgproc.getStructuringElement(Imgproc.CV_SHAPE_RECT, new Size(22, 8)); Mat imgClose = new Mat(); Imgproc.morphologyEx(imgThreshold, imgClose, 1, kernel); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgClose.png", imgClose); // ------------------ Find contours ------------------ List<MatOfPoint> contours = new ArrayList<>(); Imgproc.findContours(imgClose, contours, new Mat(), Imgproc.RETR_LIST, Imgproc.CHAIN_APPROX_SIMPLE); // **************************** DEBUG CODE ************************** Mat contourImg = new Mat(imgClose.size(), imgClose.type()); for (int i = 0; i < contours.size(); i++) { Imgproc.drawContours(contourImg, contours, i, new Scalar(255, 255, 255), -1); } Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/contours.png", contourImg); // ****************************************************************** // -------------- Convert contours -------------------- //Convert to MatOfPoint2f so that minAreaRect can be called List<MatOfPoint2f> newContours = new ArrayList<>(); for (MatOfPoint mat : contours) { MatOfPoint2f newPoint = new MatOfPoint2f(mat.toArray()); newContours.add(newPoint); } //Get minAreaRects List<RotatedRect> minAreaRects = new ArrayList<>(); for (MatOfPoint2f mat : newContours) { RotatedRect rect = Imgproc.minAreaRect(mat); /* --------------- BUG WORK AROUND ------------ Possible bug: When converting from MatOfPoint2f to RotatectRect the width height were reversed and the angle was -90 degrees from what it would be if the width and height were correct. When painting rectangle in image, the correct boxes were produced, but performing calculations on rect.angle rect.width, or rect.height yielded unwanted results. The following work around is buggy but works for my purpose */ if (rect.size.width < rect.size.height) { double temp; temp = rect.size.width; rect.size.width = rect.size.height; rect.size.height = temp; rect.angle = rect.angle + 90; } //check aspect ratio and area and angle if (rect.size.width / rect.size.height > 1 && rect.size.width / rect.size.height < 5 && rect.size.width * rect.size.height > 10000 && rect.size.width * rect.size.height < 50000 && Math.abs(rect.angle) < 20) { minAreaRects.add(rect); } //minAreaRects.add(rect); } // **************************** DEBUG CODE ************************** /* The following code is used to draw the rectangles on top of the original image for debugging purposes */ //Draw Rotated Rects Point[] vertices = new Point[4]; Mat imageWithBoxes = img; // Draw color rectangles on top of binary contours // Mat imageWithBoxes = new Mat(); // Mat temp = imgDilateOCR; // Imgproc.cvtColor(temp, imageWithBoxes, Imgproc.COLOR_GRAY2RGB); for (RotatedRect rect : minAreaRects) { rect.points(vertices); for (int i = 0; i < 4; i++) { Imgproc.line(imageWithBoxes, vertices[i], vertices[(i + 1) % 4], new Scalar(0, 0, 255), 2); } } Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/imgWithBoxes.png", imageWithBoxes); // ****************************************************************** // **************************** DEBUG CODE ************************** // for(RotatedRect rect : minAreaRects) { // System.out.println(rect.toString()); // } // ****************************************************************** /* In order to rotate image without cropping it: 1. Create new square image with dimension = diagonal of initial image. 2. Draw initial image into the center of new image. Insert initial image at ROI (Region of Interest) in new image 3. Rotate new image */ //Find diagonal/hypotenuse int hypotenuse = (int) Math.sqrt((img.rows() * img.rows()) + (img.cols() * img.cols())); //New Mat with hypotenuse as height and width Mat rotateSpace = new Mat(hypotenuse, hypotenuse, 0); int ROI_x = (rotateSpace.width() - imgClose.width()) / 2; //x start of ROI int ROI_y = (rotateSpace.height() - imgClose.height()) / 2; //x start of ROI //designate region of interest Rect r = new Rect(ROI_x, ROI_y, imgClose.width(), imgClose.height()); //Insert image into region of interest imgDilateOCR.copyTo(rotateSpace.submat(r)); Mat rotatedTemp = new Mat(); //Mat to hold temporarily rotated mat Mat rectMat = new Mat();//Mat to hold rect contents (needed for looping through pixels) Point[] rectVertices = new Point[4];//Used to build rect to make ROI Rect rec = new Rect(); List<RotatedRect> edgeDensityRects = new ArrayList<>(); //populate new arraylist with rects that satisfy edge density int count = 0; //Loop through Rotated Rects and find edge density for (RotatedRect rect : minAreaRects) { count++; rect.center = new Point((float) ROI_x + rect.center.x, (float) ROI_y + rect.center.y); //rotate image to math orientation of rotated rect rotate(rotateSpace, rotatedTemp, rect.center, rect.angle); //remove rect rotation rect.angle = 0; //get vertices from rotatedRect rect.points(rectVertices); // **************************** DEBUG CODE ************************** // // for (int k = 0; k < 4; k++) { // System.out.println(rectVertices[k]); // Imgproc.line(rotatedTemp, rectVertices[k], rectVertices[(k + 1) % 4], new Scalar(0, 0, 255), 2); // } // // Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/rotated" + count + ".png", rotatedTemp); // ***************************************************************** //build rect to use as ROI rec = new Rect(rectVertices[1], rectVertices[3]); rectMat = rotatedTemp.submat(rec); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/extracted" + count + ".png", rectMat); //find edge density // // ------------------------ edge density check NOT IMPLEMENTED -------------------- // /* // Checking for edge density was not necessary for this image so it was not implemented due to lack of time // */ // for(int i = 0; i < rectMat.rows(); ++i){ // for(int j = 0; j < rectMat.cols(); ++j){ // // //add up white pixels // } // } // // //check number of white pixels against total pixels // //only add rects to new arraylist that satisfy threshold edgeDensityRects.add(rect); } // **************************** DEBUG CODE ************************** Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/rotatedSpace.png", rotateSpace); //Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/rotatedSpaceROTATED.png", rotatedTemp); //System.out.println(imgGray.type()); // ***************************************************************** // if there is only one rectangle left, its the license plate if (edgeDensityRects.size() == 1) { String result = ""; //Hold result from OCR BufferedImage bimg; Mat cropped; cropped = rectMat.submat(new Rect(20, 50, rectMat.width() - 40, rectMat.height() - 70)); Imgcodecs.imwrite("/Users/BradWilliams/ComputerVisionOut/rectMatCropped.png", cropped); bimg = matToBufferedImage(cropped); BufferedImage image = bimg; try { result = tessInstance.doOCR(image); } catch (TesseractException e) { System.err.println(e.getMessage()); } for (int i = 0; i < 10; ++i) { } result = result.replace("\n", ""); System.out.println(result); CarProfDBImpl db = new CarProfDBImpl(); db.connect("localhost:3306/computer_vision", "root", "*******"); CarProf c = db.getCarProf(result); System.out.print(c.toString()); db.close(); } }
From source file:ac.robinson.ticqr.TickBoxImageParserTask.java
License:Apache License
@Override protected ArrayList<PointF> doInBackground(Void... unused) { Log.d(TAG, "Searching for tick boxes of " + mBoxSize + " size"); // we look for *un-ticked* boxes, rather than ticked, as they are uniform in appearance (and hence easier to // detect) - they show up as a box within a box ArrayList<PointF> centrePoints = new ArrayList<>(); int minimumOuterBoxArea = (int) Math.round(Math.pow(mBoxSize, 2)); int maximumOuterBoxArea = (int) Math.round(Math.pow(mBoxSize * 1.35f, 2)); int minimumInnerBoxArea = (int) Math.round(Math.pow(mBoxSize * 0.5f, 2)); // image adjustment - blurSize, blurSTDev and adaptiveThresholdSize must not be even numbers int blurSize = 9; int blurSTDev = 3; int adaptiveThresholdSize = Math.round(mBoxSize * 3); // (oddness ensured below) int adaptiveThresholdC = 4; // value to add to the mean (can be negative or zero) adaptiveThresholdSize = adaptiveThresholdSize % 2 == 0 ? adaptiveThresholdSize + 1 : adaptiveThresholdSize; // how similar the recognised polygon must be to its actual contour - lower is more similar float outerPolygonSimilarity = 0.045f; float innerPolygonSimilarity = 0.075f; // don't require as much accuracy for the inner part of the tick box // how large the maximum internal angle can be (e.g., for checking square shape) float maxOuterAngleCos = 0.3f; float maxInnerAngleCos = 0.4f; // use OpenCV to recognise boxes that have a box inside them - i.e. an un-ticked tick box // see: http://stackoverflow.com/a/11427501 // Bitmap newBitmap = mBitmap.copy(Bitmap.Config.RGB_565, true); // not needed Mat bitMat = new Mat(); Utils.bitmapToMat(mBitmap, bitMat);/*from w ww . j a va2 s. c o m*/ // blur and convert to grey // alternative (less flexible): Imgproc.medianBlur(bitMat, bitMat, blurSize); Imgproc.GaussianBlur(bitMat, bitMat, new Size(blurSize, blurSize), blurSTDev, blurSTDev); Imgproc.cvtColor(bitMat, bitMat, Imgproc.COLOR_RGB2GRAY); // need 8uC1 (1 channel, unsigned char) image type // perform adaptive thresholding to detect edges // alternative (slower): Imgproc.Canny(bitMat, bitMat, 10, 20, 3, false); Imgproc.adaptiveThreshold(bitMat, bitMat, 255, Imgproc.ADAPTIVE_THRESH_GAUSSIAN_C, Imgproc.THRESH_BINARY, adaptiveThresholdSize, adaptiveThresholdC); // get the contours in the image, and their hierarchy Mat hierarchyMat = new Mat(); List<MatOfPoint> contours = new ArrayList<>(); Imgproc.findContours(bitMat, contours, hierarchyMat, Imgproc.RETR_TREE, Imgproc.CHAIN_APPROX_SIMPLE); if (DEBUG) { Imgproc.drawContours(bitMat, contours, -1, new Scalar(30, 255, 255), 1); } // parse the contours and look for a box containing another box, with similar enough sizes int numContours = contours.size(); ArrayList<Integer> searchedContours = new ArrayList<>(); Log.d(TAG, "Found " + numContours + " possible tick box areas"); if (numContours > 0 && !hierarchyMat.empty()) { for (int i = 0; i < numContours; i++) { // the original detected contour MatOfPoint boxPoints = contours.get(i); // hierarchy key: 0 = next sibling num, 1 = previous sibling num, 2 = first child num, 3 = parent num int childBox = (int) hierarchyMat.get(0, i)[2]; // usually the largest child (as we're doing RETR_TREE) if (childBox == -1) { // we only want elements that have children continue; } else { if (searchedContours.contains(childBox)) { if (DEBUG) { Log.d(TAG, "Ignoring duplicate box at first stage: " + childBox); } continue; } else { searchedContours.add(childBox); } } // discard smaller (i.e. noise) outer box areas as soon as possible for speed // used to do Imgproc.isContourConvex(outerPoints) later, but the angle check covers this, so no need double originalArea = Math.abs(Imgproc.contourArea(boxPoints)); if (originalArea < minimumOuterBoxArea) { // if (DEBUG) { // drawPoints(bitMat, boxPoints, new Scalar(255, 255, 255), 1); // Log.d(TAG, "Outer box too small"); // } continue; } if (originalArea > maximumOuterBoxArea) { // if (DEBUG) { // drawPoints(bitMat, boxPoints, new Scalar(255, 255, 255), 1); // Log.d(TAG, "Outer box too big"); // } continue; } // simplify the contours of the outer box - we want to detect four-sided shapes only MatOfPoint2f boxPoints2f = new MatOfPoint2f(boxPoints.toArray()); // Point2f for approxPolyDP Imgproc.approxPolyDP(boxPoints2f, boxPoints2f, outerPolygonSimilarity * Imgproc.arcLength(boxPoints2f, true), true); // simplify the contour if (boxPoints2f.height() != 4) { // height is number of points if (DEBUG) { // drawPoints(bitMat, new MatOfPoint(boxPoints2f.toArray()), new Scalar(255, 255, 255), 1); Log.d(TAG, "Outer box not 4 points"); } continue; } // check that the simplified outer box is approximately a square, angle-wise org.opencv.core.Point[] boxPointsArray = boxPoints2f.toArray(); double maxCosine = 0; for (int j = 0; j < 4; j++) { org.opencv.core.Point pL = boxPointsArray[j]; org.opencv.core.Point pIntersect = boxPointsArray[(j + 1) % 4]; org.opencv.core.Point pR = boxPointsArray[(j + 2) % 4]; getLineAngle(pL, pIntersect, pR); maxCosine = Math.max(maxCosine, getLineAngle(pL, pIntersect, pR)); } if (maxCosine > maxOuterAngleCos) { if (DEBUG) { // drawPoints(bitMat, new MatOfPoint(boxPoints2f.toArray()), new Scalar(255, 255, 255), 1); Log.d(TAG, "Outer angles not square enough"); } continue; } // check that the simplified outer box is approximately a square, line length-wise double minLine = Double.MAX_VALUE; double maxLine = 0; for (int p = 1; p < 4; p++) { org.opencv.core.Point p1 = boxPointsArray[p - 1]; org.opencv.core.Point p2 = boxPointsArray[p]; double xd = p1.x - p2.x; double yd = p1.y - p2.y; double lineLength = Math.sqrt((xd * xd) + (yd * yd)); minLine = Math.min(minLine, lineLength); maxLine = Math.max(maxLine, lineLength); } if (maxLine - minLine > minLine) { if (DEBUG) { // drawPoints(bitMat, new MatOfPoint(boxPoints2f.toArray()), new Scalar(255, 255, 255), 1); Log.d(TAG, "Outer lines not square enough"); } continue; } // draw the outer box if debugging if (DEBUG) { MatOfPoint debugBoxPoints = new MatOfPoint(boxPointsArray); Log.d(TAG, "Potential tick box: " + boxPoints2f.size() + ", " + "area: " + Math.abs(Imgproc.contourArea(debugBoxPoints)) + " (min:" + minimumOuterBoxArea + ", max:" + maximumOuterBoxArea + ")"); drawPoints(bitMat, debugBoxPoints, new Scalar(50, 255, 255), 2); } // loop through the children - they should be in descending size order, but sometimes this is wrong boolean wrongBox = false; while (true) { if (DEBUG) { Log.d(TAG, "Looping with box: " + childBox); } // we've previously tried a child - try the next one // key: 0 = next sibling num, 1 = previous sibling num, 2 = first child num, 3 = parent num if (wrongBox) { childBox = (int) hierarchyMat.get(0, childBox)[0]; if (childBox == -1) { break; } if (searchedContours.contains(childBox)) { if (DEBUG) { Log.d(TAG, "Ignoring duplicate box at loop stage: " + childBox); } break; } else { searchedContours.add(childBox); } //noinspection UnusedAssignment wrongBox = false; } // perhaps this is the outer box - check its child has no children itself // (removed so tiny children (i.e. noise) don't mean we mis-detect an un-ticked box as ticked) // if (hierarchyMat.get(0, childBox)[2] != -1) { // continue; // } // check the size of the child box is large enough boxPoints = contours.get(childBox); originalArea = Math.abs(Imgproc.contourArea(boxPoints)); if (originalArea < minimumInnerBoxArea) { if (DEBUG) { // drawPoints(bitMat, boxPoints, new Scalar(255, 255, 255), 1); Log.d(TAG, "Inner box too small"); } wrongBox = true; continue; } // simplify the contours of the inner box - again, we want four-sided shapes only boxPoints2f = new MatOfPoint2f(boxPoints.toArray()); Imgproc.approxPolyDP(boxPoints2f, boxPoints2f, innerPolygonSimilarity * Imgproc.arcLength(boxPoints2f, true), true); if (boxPoints2f.height() != 4) { // height is number of points // if (DEBUG) { // drawPoints(bitMat, boxPoints, new Scalar(255, 255, 255), 1); // } Log.d(TAG, "Inner box fewer than 4 points"); // TODO: allow > 4 for low quality images? wrongBox = true; continue; } // check that the simplified inner box is approximately a square, angle-wise // higher tolerance because noise means if we get several inners, the box may not be quite square boxPointsArray = boxPoints2f.toArray(); maxCosine = 0; for (int j = 0; j < 4; j++) { org.opencv.core.Point pL = boxPointsArray[j]; org.opencv.core.Point pIntersect = boxPointsArray[(j + 1) % 4]; org.opencv.core.Point pR = boxPointsArray[(j + 2) % 4]; getLineAngle(pL, pIntersect, pR); maxCosine = Math.max(maxCosine, getLineAngle(pL, pIntersect, pR)); } if (maxCosine > maxInnerAngleCos) { Log.d(TAG, "Inner angles not square enough"); wrongBox = true; continue; } // this is probably an inner box - log if debugging if (DEBUG) { Log.d(TAG, "Un-ticked inner box: " + boxPoints2f.size() + ", " + "area: " + Math.abs(Imgproc.contourArea(new MatOfPoint2f(boxPointsArray))) + " (min: " + minimumInnerBoxArea + ")"); } // find the inner box centre double centreX = (boxPointsArray[0].x + boxPointsArray[1].x + boxPointsArray[2].x + boxPointsArray[3].x) / 4f; double centreY = (boxPointsArray[0].y + boxPointsArray[1].y + boxPointsArray[2].y + boxPointsArray[3].y) / 4f; // draw the inner box if debugging if (DEBUG) { drawPoints(bitMat, new MatOfPoint(boxPointsArray), new Scalar(255, 255, 255), 1); Core.circle(bitMat, new org.opencv.core.Point(centreX, centreY), 3, new Scalar(255, 255, 255)); } // add to the list of boxes to check centrePoints.add(new PointF((float) centreX, (float) centreY)); break; } } } Log.d(TAG, "Found " + centrePoints.size() + " un-ticked boxes"); return centrePoints; }
From source file:arlocros.Utils.java
License:Apache License
static public Mat tresholdContrastBlackWhite(Mat srcImage, int filterBlockSize, double subtractedConstant, boolean invertBlackWhiteColor) { final Mat transformMat = new Mat(1, 3, CvType.CV_32F); final int row = 0; final int col = 0; transformMat.put(row, col, 0.33, 0.33, 0.34); final Mat grayImage = new Mat(srcImage.height(), srcImage.width(), CvType.CV_8UC1); Core.transform(srcImage, grayImage, transformMat); Mat thresholdedImage = new Mat(grayImage.height(), grayImage.width(), CvType.CV_8UC1); Imgproc.adaptiveThreshold(grayImage, thresholdedImage, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, filterBlockSize, subtractedConstant); grayImage.release();/*from w w w . j av a 2s .c om*/ if (invertBlackWhiteColor) { final Mat invertedImage = new Mat(thresholdedImage.height(), thresholdedImage.width(), CvType.CV_8UC1); Core.bitwise_not(thresholdedImage, invertedImage); thresholdedImage.release(); thresholdedImage = invertedImage; } final Mat coloredImage = new Mat(thresholdedImage.height(), thresholdedImage.width(), CvType.CV_8UC3); Imgproc.cvtColor(thresholdedImage, coloredImage, Imgproc.COLOR_GRAY2RGB); thresholdedImage.release(); return coloredImage; }
From source file:classes.BlobsFinder.java
public void findBlobContours() { Mat grayImage = new Mat(); Imgproc.cvtColor(image, grayImage, Imgproc.COLOR_BGR2GRAY); ImageUtils.saveImage(grayImage, outImageName + "_grayImage.png", request); Mat gaussianImage = new Mat(); Imgproc.GaussianBlur(grayImage, gaussianImage, new Size(0, 0), 3); Core.addWeighted(grayImage, 1.5, gaussianImage, -1, 0, gaussianImage); ImageUtils.saveImage(gaussianImage, outImageName + "_gaussianGrayImage.png", request); Mat binaryImage = new Mat(); Imgproc.adaptiveThreshold(gaussianImage, binaryImage, 255, Imgproc.ADAPTIVE_THRESH_GAUSSIAN_C, Imgproc.THRESH_BINARY_INV, 15, 4); ImageUtils.saveImage(binaryImage, outImageName + "_binaryImage.png", request); Mat erodedImage = new Mat(); binaryImage.copyTo(erodedImage);/*w w w . j a va 2s. com*/ Mat structuringElement = Imgproc.getStructuringElement(Imgproc.MORPH_RECT, new Size(3, 3)); Point anchor = new Point(-1, -1); Imgproc.morphologyEx(erodedImage, erodedImage, Imgproc.MORPH_CLOSE, structuringElement, anchor, 1); ImageUtils.saveImage(erodedImage, outImageName + "_erodedImage.png", request); List<MatOfPoint> contours = new ArrayList<MatOfPoint>(); Imgproc.findContours(erodedImage, contours, new Mat(), Imgproc.RETR_EXTERNAL, Imgproc.CHAIN_APPROX_SIMPLE); Mat originalContoursImage = new Mat(image.size(), CvType.CV_8UC1, new Scalar(0)); Scalar contourColor = new Scalar(255); int thickness = -1; // Thicknes should be lower than zero in order to drawn the filled contours Imgproc.drawContours(originalContoursImage, contours, -1, contourColor, thickness); // Drawing all the contours found ImageUtils.saveImage(originalContoursImage, outImageName + "_originalContoursImage.png", request); Mat erodedContoursImage = new Mat(); Imgproc.erode(originalContoursImage, erodedContoursImage, structuringElement, anchor, 1); ImageUtils.saveImage(erodedContoursImage, outImageName + "_erodedContoursImage.png", request); ArrayList<MatOfPoint> finalContours = new ArrayList<MatOfPoint>(); Mat finalContourImage = new Mat(image.size(), CvType.CV_8UC1, new Scalar(0)); Imgproc.findContours(erodedContoursImage, finalContours, new Mat(), Imgproc.RETR_EXTERNAL, Imgproc.CHAIN_APPROX_SIMPLE); for (int i = 0; i < finalContours.size(); i++) { MatOfPoint currentContour = finalContours.get(i); double area = Imgproc.contourArea(currentContour); if (area > MIN_AREA) { validContours.add(currentContour); String fabricPath = generateFabricPathString(currentContour); contourPaths.add(fabricPath); Rect boundingRect = Imgproc.boundingRect(currentContour); topLeftCorners.add(boundingRect.tl()); contoursAreas.add(area); } } // Drawing ALL the valid contours Imgproc.drawContours(finalContourImage, validContours, -1, contourColor, thickness); ImageUtils.saveImage(finalContourImage, outImageName + "_finalContourImage.png", request); }
From source file:classes.TextRecognitionPreparer.java
public static ArrayList<BufferedImage> generateRecognizableBufferedImages(Mat img, Scalar backgroundColor, Scalar userPickedColor) {//from w w w .ja v a 2 s . c om ArrayList<BufferedImage> images = new ArrayList<BufferedImage>(); Mat filledImage = img.clone(); Scalar newVal = new Scalar(userPickedColor.val[2], userPickedColor.val[1], userPickedColor.val[0]); Imgproc.floodFill(filledImage, new Mat(), new Point(0, 0), newVal); images.add(Util.mat2Img(filledImage)); Mat filledGrayImage = new Mat(); Imgproc.cvtColor(filledImage, filledGrayImage, Imgproc.COLOR_BGR2GRAY); images.add(Util.mat2Img(filledGrayImage)); Mat gaussianGrayImage = new Mat(); Imgproc.GaussianBlur(filledGrayImage, gaussianGrayImage, new Size(0, 0), 3); Core.addWeighted(filledGrayImage, 3.5, gaussianGrayImage, -1, 0, gaussianGrayImage); images.add(Util.mat2Img(gaussianGrayImage)); Mat filledBinarizedImage2 = new Mat(); Imgproc.adaptiveThreshold(filledGrayImage, filledBinarizedImage2, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 75, 10); images.add(Util.mat2Img(filledBinarizedImage2)); Mat filledBinarizedImage1 = new Mat(); Imgproc.adaptiveThreshold(filledGrayImage, filledBinarizedImage1, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 15, 4); images.add(Util.mat2Img(filledBinarizedImage1)); return images; }
From source file:classes.TextRecognitionPreparer.java
public static ArrayList<Mat> generateRecognizableImages(Mat img, Scalar backgroundColor, Scalar userPickedColor) {/*from w w w .j a v a 2 s. c o m*/ ArrayList<Mat> images = new ArrayList<Mat>(); Mat filledImage = img.clone(); Scalar newVal = new Scalar(userPickedColor.val[2], userPickedColor.val[1], userPickedColor.val[0]); Imgproc.floodFill(filledImage, new Mat(), new Point(0, 0), newVal); String file1 = "filledImage.png"; // Highgui.imwrite(file1, filledImage); images.add(filledImage); Mat filledGrayImage = new Mat(); Imgproc.cvtColor(filledImage, filledGrayImage, Imgproc.COLOR_BGR2GRAY); String file2 = "filledGrayImage.png"; // Highgui.imwrite(file2, filledGrayImage); images.add(filledGrayImage); Mat gaussianGrayImage = new Mat(); Imgproc.GaussianBlur(filledGrayImage, gaussianGrayImage, new Size(0, 0), 3); Core.addWeighted(filledGrayImage, 3.5, gaussianGrayImage, -1, 0, gaussianGrayImage); // Core.addWeighted(filledGrayImage, 2.5, gaussianGrayImage, -0.5, 0, gaussianGrayImage); String file3 = "sharpenedImage.png"; // Highgui.imwrite(file3, gaussianGrayImage); images.add(gaussianGrayImage); Mat filledBinarizedImage = new Mat(); Imgproc.adaptiveThreshold(filledGrayImage, filledBinarizedImage, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 15, 4); String file4 = "filledBinarizedImage.png"; // Highgui.imwrite(file4, filledBinarizedImage); images.add(filledBinarizedImage); // BackgroundSubtractorMOG2 backgroundSubtractorMOG2 = new BackgroundSubtractorMOG2(); // Mat foregroundMask = new Mat(); // backgroundSubtractorMOG2.apply(img, foregroundMask); // Highgui.imwrite("mFGMask.png", foregroundMask); Scalar fillingColor = cluster(userPickedColor, img, 3); Mat replacedColor = replaceColor(img, backgroundColor, fillingColor); String file5 = "replacedColor.png"; // Highgui.imwrite(file5, replacedColor); images.add(replacedColor); Mat grayImage = new Mat(); Imgproc.cvtColor(replacedColor, grayImage, Imgproc.COLOR_BGR2GRAY); String file6 = "grayImage.png"; // Highgui.imwrite(file6, grayImage); images.add(grayImage); Mat binarized = new Mat(); Imgproc.adaptiveThreshold(grayImage, binarized, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 15, 4); String file7 = "binarized.png"; // Highgui.imwrite(file7, binarized); images.add(binarized); Mat colorReplacedEqualized = equalizeIntensity(replacedColor); String file8 = "colorReplacedEqualized.png"; // Highgui.imwrite(file8, colorReplacedEqualized); images.add(colorReplacedEqualized); Mat colorReducedImage = reduceColor(replacedColor, 64); String file9 = "replacedColorColorReduced.png"; // Highgui.imwrite(file9, colorReducedImage); images.add(colorReducedImage); // Equalizing image Mat colorReducedEqualized = equalizeIntensity(colorReducedImage); String file10 = "colorReducedEqualized.png"; // Highgui.imwrite(file10, colorReducedEqualized); images.add(colorReducedEqualized); return images; }
From source file:com.compta.firstak.notedefrais.MainActivity.java
public void Opencv(String imageName) { bitmap = BitmapFactory.decodeFile(imageName); Mat imageMat = new Mat(); org.opencv.android.Utils.bitmapToMat(bitmap, imageMat); Imgproc.cvtColor(imageMat, imageMat, Imgproc.COLOR_BGR2GRAY); // 1) Apply gaussian blur to remove noise Imgproc.GaussianBlur(imageMat, imageMat, new Size(9, 9), 0); // 2) AdaptiveThreshold -> classify as either black or white Imgproc.adaptiveThreshold(imageMat, imageMat, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 5, 2);//from ww w .ja v a 2 s . c o m // 3) Invert the image -> so most of the image is black Core.bitwise_not(imageMat, imageMat); // 4) Dilate -> fill the image using the MORPH_DILATE Mat kernel = Imgproc.getStructuringElement(Imgproc.MORPH_DILATE, new Size(3, 3), new Point(1, 1)); Imgproc.dilate(imageMat, imageMat, kernel); org.opencv.android.Utils.matToBitmap(imageMat, bitmap); mImageViewer.setImageBitmap(bitmap); ByteArrayOutputStream stream1 = new ByteArrayOutputStream(); bitmap.compress(Bitmap.CompressFormat.PNG, 100, stream1); byteArray = stream1.toByteArray(); }
From source file:com.github.mbillingr.correlationcheck.ImageProcessor.java
License:Open Source License
public List<Point> extractPoints() { Mat gray = new Mat();//work_width, work_height, CvType.CV_8UC1); Mat binary = new Mat(); Mat kernel = Mat.ones(3, 3, CvType.CV_8UC1); debugreset();/* ww w.ja va2 s .c o m*/ Mat image = load_transformed(); working_image = image.clone(); debugsave(image, "source"); Imgproc.cvtColor(image, gray, Imgproc.COLOR_RGB2GRAY); debugsave(gray, "grayscale"); Imgproc.GaussianBlur(gray, gray, new Size(15, 15), 0); debugsave(gray, "blurred"); //Imgproc.equalizeHist(gray, gray); //debugsave(gray, "equalized"); Imgproc.adaptiveThreshold(gray, binary, 255, Imgproc.ADAPTIVE_THRESH_GAUSSIAN_C, Imgproc.THRESH_BINARY_INV, 129, 5); //Imgproc.threshold(gray, binary, 0, 255, Imgproc.THRESH_BINARY_INV + Imgproc.THRESH_OTSU); //Imgproc.threshold(gray, binary, 128, 255, Imgproc.THRESH_BINARY_INV); debugsave(binary, "binary"); Imgproc.morphologyEx(binary, binary, Imgproc.MORPH_CLOSE, kernel); debugsave(binary, "closed"); Imgproc.morphologyEx(binary, binary, Imgproc.MORPH_OPEN, kernel); debugsave(binary, "opened"); List<MatOfPoint> contours = new ArrayList<>(); Mat hierarchy = new Mat(); Imgproc.findContours(binary, contours, hierarchy, Imgproc.RETR_TREE, Imgproc.CHAIN_APPROX_SIMPLE); // is binary is now changed Imgproc.drawContours(image, contours, -1, new Scalar(0, 0, 255), 3); debugsave(image, "contours"); List<PointAndArea> points = new ArrayList<>(); for (MatOfPoint cnt : contours) { MatOfPoint2f c2f = new MatOfPoint2f(); c2f.fromArray(cnt.toArray()); RotatedRect rr = Imgproc.minAreaRect(c2f); double area = Imgproc.contourArea(cnt); if (rr.size.width / rr.size.height < 3 && rr.size.height / rr.size.width < 3 && rr.size.width < 64 && rr.size.height < 64 && area > 9 && area < 10000) { points.add(new PointAndArea((int) area, rr.center)); } } List<Point> final_points = new ArrayList<>(); Collections.sort(points); Collections.reverse(points); int prev = -1; for (PointAndArea p : points) { Log.i("area", Integer.toString(p.area)); if (prev == -1 || p.area >= prev / 2) { prev = p.area; Imgproc.circle(image, p.point, 10, new Scalar(0, 255, 0), 5); final_points.add(new Point(1 - p.point.y / work_height, 1 - p.point.x / work_width)); } } debugsave(image, "circles"); return final_points; }