Пример #1
0
  public static void main(String[] args) {

    System.loadLibrary(Core.NATIVE_LIBRARY_NAME);

    /** *** Configuration Variables **** */
    int imgWidth = 200;
    int imgHeight = 200;
    int numPatch = 2000;
    int patchWidth = 40;
    int patchHeight = 40;
    int k = 200; // kmeans number of center
    int numBins = 8;

    String filePathRed = "base/Red/";
    String filePathBlack = "base/Black";
    String procPathRed = "base/ProcRed";
    String procPathBlack = "base/ProcBlack";
    /** ******************************** */
    ArrayList<String> fileNames = new ArrayList<String>();

    sources = new ArrayList<Mat>();

    /* Image IO */
    try {

      /* Read Red Staplers */
      File folder = new File(filePathRed);
      BufferedImage currentImage;
      for (final File fileEntry : folder.listFiles()) {
        if (!fileEntry.isDirectory()) {

          // Resize Image
          currentImage = ImageProc.resize(ImageIO.read(fileEntry), imgWidth, imgHeight);

          File outFile = new File(procPathRed + "/" + fileEntry.getName());
          ImageIO.write(currentImage, "JPG", outFile);
          sources.add(Highgui.imread(outFile.getPath()));
          fileNames.add(outFile.getName());
        }
      }

      /* Read Black Staplers */
      folder = new File(filePathBlack);
      for (final File fileEntry : folder.listFiles()) {
        if (!fileEntry.isDirectory()) {

          // Resize Image
          currentImage = ImageProc.resize(ImageIO.read(fileEntry), imgWidth, imgHeight);

          File outFile = new File(procPathBlack + "/" + fileEntry.getName());
          ImageIO.write(currentImage, "JPG", outFile);
          sources.add(Highgui.imread(outFile.getPath()));
          fileNames.add(outFile.getName());
        }
      }

    } catch (IOException e) {
      e.printStackTrace();
    }

    /** ************************************* */
    float[] p1 = new float[30];
    float[] p2 = new float[30];

    /* Create Image Patches and calculate color feature vector for each patch */
    Iterator<Mat> imgIter = sources.iterator();
    Mat thisImage;
    Mat featureMat = new Mat();
    List<Mat> imagePatches = null;
    Iterator<Mat> patchIter = null;

    while (imgIter.hasNext()) {

      thisImage = imgIter.next();

      // Randomly Sample Patches
      imagePatches = ImageProc.sampleImage(thisImage, patchWidth, patchHeight, numPatch);
      patchIter = imagePatches.iterator();

      // Create color feature vector for each patch
      while (patchIter.hasNext()) {
        featureMat.push_back(ImageProc.calBGRFeature(patchIter.next(), numBins));
      }
    }

    Mat centers = new Mat();
    Mat bestLabels = new Mat();
    Core.kmeans(
        featureMat,
        k,
        bestLabels,
        new TermCriteria(TermCriteria.EPS, 0, Math.pow(10, -5)),
        0,
        Core.KMEANS_RANDOM_CENTERS,
        centers);

    MatOfFloat bestLabelRange = new MatOfFloat(0, k);

    ArrayList<Mat> centerHist = new ArrayList<Mat>();
    Mat centerHistMat = new Mat(0, k, CvType.CV_32FC1);

    imgIter = sources.listIterator();
    Iterator<String> nameIter = fileNames.iterator();

    int ptr = 0;
    int cnt = 0;

    // Output CSV

    try {
      File outCSV = new File("output/res.csv");
      FileWriter fstream = new FileWriter(outCSV);
      BufferedWriter out = new BufferedWriter(fstream);
      StringBuilder sb;
      out.write("@relation staplers\n");
      for (int n = 0; n < 200; n++) {
        out.write("@attribute " + "a" + n + " real\n");
      }

      out.write("@attribute class {RedStapler, BlackStapler}\n\n");
      out.write("@data\n\n");

      while (imgIter.hasNext()) {

        Mat thisMat = new Mat(bestLabels, new Range(ptr, ptr + numPatch), new Range(0, 1));
        Mat mat = new Mat();
        thisMat.convertTo(mat, CvType.CV_32F);

        ArrayList<Mat> bestLabelList = new ArrayList<Mat>();
        bestLabelList.add(mat);

        Mat thisHist = new Mat();
        Imgproc.calcHist(
            bestLabelList, new MatOfInt(0), new Mat(), thisHist, new MatOfInt(k), bestLabelRange);

        centerHist.add(thisHist);

        // Create file
        sb = new StringBuilder();

        float[] histArr = new float[(int) thisHist.total()];
        thisHist.get(0, 0, histArr);

        for (int m = 0; m < histArr.length; m++) {
          sb.append(histArr[m] + ",");
        }

        if (cnt++ < 10) sb.append("RedStapler");
        else sb.append("BlackStapler");

        sb.append("\n");
        out.write(sb.toString());
        // Close the output stream

        centerHistMat.push_back(thisHist.t());
        ptr += numPatch;
        imgIter.next();
      }

      out.close();
    } catch (IOException e) { // Catch exception if any
      System.err.println("Error: " + e.getMessage());
      System.exit(-1);
    }

    /* Support Vector Machine Validation */
    Mat labelMat = new Mat(sources.size(), 1, CvType.CV_32FC1);

    double[] labels = new double[20];
    for (int i = 0; i < 10; i++) {
      labels[i] = 1;
      labels[i + 10] = -1;
    }
    labelMat.put(0, 0, labels);

    CvSVMParams params = new CvSVMParams();
    params.set_kernel_type(CvSVM.LINEAR);

    CvSVM svm = new CvSVM();
    svm.train(centerHistMat, labelMat, new Mat(), new Mat(), params);
    svm.save("base/haha.txt");
    String basePath = "base/predict/";

    try {
      File testCSV = new File("output/test.arff");
      FileWriter testStream = new FileWriter(testCSV);
      BufferedWriter testOut = new BufferedWriter(testStream);

      testOut.write("@relation staplers\n");
      for (int n = 0; n < 200; n++) {
        testOut.write("@attribute " + "a" + n + " real\n");
      }

      testOut.write("@attribute class {RedStapler, BlackStapler}\n\n");
      testOut.write("@data\n\n");

      for (int m = 0; m < 21; m++) {

        // System.out.println(basePath + m + ".jpg");
        Mat testImg = Highgui.imread(basePath + m + ".jpg");

        List<Mat> patches = ImageProc.sampleImage(testImg, patchWidth, patchHeight, numPatch);
        List<Mat> features = new ArrayList<Mat>();

        for (int i = 0; i < patches.size(); i++) {

          Mat testVector = ImageProc.calBGRFeature(patches.get(i), numBins);
          features.add(testVector);
        }

        Mat testData = ImageProc.calFeatureVector(features, centers);

        StringBuilder testsb = new StringBuilder();
        // String name = nameIter.next();
        // sb.append(name + ",");

        float[] data = new float[testData.cols()];
        testData.get(0, 0, data);

        for (int o = 0; o < data.length; o++) {
          testsb.append(data[o] + ",");
        }
        if (m < 6) testsb.append("RedStapler");
        else testsb.append("BlackStapler");

        testsb.append("\n");
        testOut.write(testsb.toString());

        System.out.println("Img" + m + " " + svm.predict(testData));
      }
    } catch (IOException e) {
      e.printStackTrace();
      System.exit(-1);
    }
  }
  public Mat onCameraFrame(Mat inputFrame) {
    inputFrame.copyTo(mRgba);

    switch (ImageManipulationsActivity.viewMode) {
      case ImageManipulationsActivity.VIEW_MODE_RGBA:
        break;

      case ImageManipulationsActivity.VIEW_MODE_HIST:
        if ((mSizeRgba == null)
            || (mRgba.cols() != mSizeRgba.width)
            || (mRgba.height() != mSizeRgba.height)) CreateAuxiliaryMats();
        int thikness = (int) (mSizeRgba.width / (mHistSizeNum + 10) / 5);
        if (thikness > 5) thikness = 5;
        int offset = (int) ((mSizeRgba.width - (5 * mHistSizeNum + 4 * 10) * thikness) / 2);
        // RGB
        for (int c = 0; c < 3; c++) {
          Imgproc.calcHist(Arrays.asList(mRgba), mChannels[c], mMat0, mHist, mHistSize, mRanges);
          Core.normalize(mHist, mHist, mSizeRgba.height / 2, 0, Core.NORM_INF);
          mHist.get(0, 0, mBuff);
          for (int h = 0; h < mHistSizeNum; h++) {
            mP1.x = mP2.x = offset + (c * (mHistSizeNum + 10) + h) * thikness;
            mP1.y = mSizeRgba.height - 1;
            mP2.y = mP1.y - 2 - (int) mBuff[h];
            Core.line(mRgba, mP1, mP2, mColorsRGB[c], thikness);
          }
        }
        // Value and Hue
        Imgproc.cvtColor(mRgba, mIntermediateMat, Imgproc.COLOR_RGB2HSV_FULL);
        // Value
        Imgproc.calcHist(
            Arrays.asList(mIntermediateMat), mChannels[2], mMat0, mHist, mHistSize, mRanges);
        Core.normalize(mHist, mHist, mSizeRgba.height / 2, 0, Core.NORM_INF);
        mHist.get(0, 0, mBuff);
        for (int h = 0; h < mHistSizeNum; h++) {
          mP1.x = mP2.x = offset + (3 * (mHistSizeNum + 10) + h) * thikness;
          mP1.y = mSizeRgba.height - 1;
          mP2.y = mP1.y - 2 - (int) mBuff[h];
          Core.line(mRgba, mP1, mP2, mWhilte, thikness);
        }
        // Hue
        Imgproc.calcHist(
            Arrays.asList(mIntermediateMat), mChannels[0], mMat0, mHist, mHistSize, mRanges);
        Core.normalize(mHist, mHist, mSizeRgba.height / 2, 0, Core.NORM_INF);
        mHist.get(0, 0, mBuff);
        for (int h = 0; h < mHistSizeNum; h++) {
          mP1.x = mP2.x = offset + (4 * (mHistSizeNum + 10) + h) * thikness;
          mP1.y = mSizeRgba.height - 1;
          mP2.y = mP1.y - 2 - (int) mBuff[h];
          Core.line(mRgba, mP1, mP2, mColorsHue[h], thikness);
        }
        break;

      case ImageManipulationsActivity.VIEW_MODE_CANNY:
        if ((mRgbaInnerWindow == null)
            || (mGrayInnerWindow == null)
            || (mRgba.cols() != mSizeRgba.width)
            || (mRgba.height() != mSizeRgba.height)) CreateAuxiliaryMats();
        Imgproc.Canny(mRgbaInnerWindow, mIntermediateMat, 80, 90);
        Imgproc.cvtColor(mIntermediateMat, mRgbaInnerWindow, Imgproc.COLOR_GRAY2BGRA, 4);
        break;

      case ImageManipulationsActivity.VIEW_MODE_SOBEL:
        Imgproc.cvtColor(mRgba, mGray, Imgproc.COLOR_RGBA2GRAY);

        if ((mRgbaInnerWindow == null)
            || (mGrayInnerWindow == null)
            || (mRgba.cols() != mSizeRgba.width)
            || (mRgba.height() != mSizeRgba.height)) CreateAuxiliaryMats();

        Imgproc.Sobel(mGrayInnerWindow, mIntermediateMat, CvType.CV_8U, 1, 1);
        Core.convertScaleAbs(mIntermediateMat, mIntermediateMat, 10, 0);
        Imgproc.cvtColor(mIntermediateMat, mRgbaInnerWindow, Imgproc.COLOR_GRAY2BGRA, 4);
        break;

      case ImageManipulationsActivity.VIEW_MODE_SEPIA:
        Core.transform(mRgba, mRgba, mSepiaKernel);
        break;

      case ImageManipulationsActivity.VIEW_MODE_ZOOM:
        if ((mZoomCorner == null)
            || (mZoomWindow == null)
            || (mRgba.cols() != mSizeRgba.width)
            || (mRgba.height() != mSizeRgba.height)) CreateAuxiliaryMats();
        Imgproc.resize(mZoomWindow, mZoomCorner, mZoomCorner.size());

        Size wsize = mZoomWindow.size();
        Core.rectangle(
            mZoomWindow,
            new Point(1, 1),
            new Point(wsize.width - 2, wsize.height - 2),
            new Scalar(255, 0, 0, 255),
            2);
        break;

      case ImageManipulationsActivity.VIEW_MODE_PIXELIZE:
        if ((mRgbaInnerWindow == null)
            || (mRgba.cols() != mSizeRgba.width)
            || (mRgba.height() != mSizeRgba.height)) CreateAuxiliaryMats();
        Imgproc.resize(mRgbaInnerWindow, mIntermediateMat, mSize0, 0.1, 0.1, Imgproc.INTER_NEAREST);
        Imgproc.resize(
            mIntermediateMat, mRgbaInnerWindow, mSizeRgbaInner, 0., 0., Imgproc.INTER_NEAREST);
        break;

      case ImageManipulationsActivity.VIEW_MODE_POSTERIZE:
        if ((mRgbaInnerWindow == null)
            || (mRgba.cols() != mSizeRgba.width)
            || (mRgba.height() != mSizeRgba.height)) CreateAuxiliaryMats();
        /*
        Imgproc.cvtColor(mRgbaInnerWindow, mIntermediateMat, Imgproc.COLOR_RGBA2RGB);
        Imgproc.pyrMeanShiftFiltering(mIntermediateMat, mIntermediateMat, 5, 50);
        Imgproc.cvtColor(mIntermediateMat, mRgbaInnerWindow, Imgproc.COLOR_RGB2RGBA);
        */

        Imgproc.Canny(mRgbaInnerWindow, mIntermediateMat, 80, 90);
        mRgbaInnerWindow.setTo(new Scalar(0, 0, 0, 255), mIntermediateMat);
        Core.convertScaleAbs(mRgbaInnerWindow, mIntermediateMat, 1. / 16, 0);
        Core.convertScaleAbs(mIntermediateMat, mRgbaInnerWindow, 16, 0);
        break;
    }

    return mRgba;
  }