void Bernsen(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // Bernsen recommends WIN_SIZE = 31 and CONTRAST_THRESHOLD = 15. // 1) Bernsen J. (1986) "Dynamic Thresholding of Grey-Level Images" // Proc. of the 8th Int. Conf. on Pattern Recognition, pp. 1251-1255 // 2) Sezgin M. and Sankur B. (2004) "Survey over Image Thresholding // Techniques and Quantitative Performance Evaluation" Journal of // Electronic Imaging, 13(1): 146-165 // http://citeseer.ist.psu.edu/sezgin04survey.html // Ported to ImageJ plugin from E Celebi's fourier_0.8 routines // This version uses a circular local window, instead of a rectagular one ImagePlus Maximp, Minimp; ImageProcessor ip = imp.getProcessor(), ipMax, ipMin; int contrast_threshold = 15; int local_contrast; int mid_gray; byte object; byte backg; int temp; if (par1 != 0) { IJ.log("Bernsen: changed contrast_threshold from :" + contrast_threshold + " to:" + par1); contrast_threshold = (int) par1; } if (doIwhite) { object = (byte) 0xff; backg = (byte) 0; } else { object = (byte) 0; backg = (byte) 0xff; } Maximp = duplicateImage(ip); ipMax = Maximp.getProcessor(); RankFilters rf = new RankFilters(); rf.rank(ipMax, radius, rf.MAX); // Maximum // Maximp.show(); Minimp = duplicateImage(ip); ipMin = Minimp.getProcessor(); rf.rank(ipMin, radius, rf.MIN); // Minimum // Minimp.show(); byte[] pixels = (byte[]) ip.getPixels(); byte[] max = (byte[]) ipMax.getPixels(); byte[] min = (byte[]) ipMin.getPixels(); for (int i = 0; i < pixels.length; i++) { local_contrast = (int) ((max[i] & 0xff) - (min[i] & 0xff)); mid_gray = (int) ((min[i] & 0xff) + (max[i] & 0xff)) / 2; temp = (int) (pixels[i] & 0x0000ff); if (local_contrast < contrast_threshold) pixels[i] = (mid_gray >= 128) ? object : backg; // Low contrast region else pixels[i] = (temp >= mid_gray) ? object : backg; } // imp.updateAndDraw(); return; }
void Contrast(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // G. Landini, 2013 // Based on a simple contrast toggle. This procedure does not have user-provided paramters other // than the kernel radius // Sets the pixel value to either white or black depending on whether its current value is // closest to the local Max or Min respectively // The procedure is similar to Toggle Contrast Enhancement (see Soille, Morphological Image // Analysis (2004), p. 259 ImagePlus Maximp, Minimp; ImageProcessor ip = imp.getProcessor(), ipMax, ipMin; int c_value = 0; int mid_gray; byte object; byte backg; if (doIwhite) { object = (byte) 0xff; backg = (byte) 0; } else { object = (byte) 0; backg = (byte) 0xff; } Maximp = duplicateImage(ip); ipMax = Maximp.getProcessor(); RankFilters rf = new RankFilters(); rf.rank(ipMax, radius, rf.MAX); // Maximum // Maximp.show(); Minimp = duplicateImage(ip); ipMin = Minimp.getProcessor(); rf.rank(ipMin, radius, rf.MIN); // Minimum // Minimp.show(); byte[] pixels = (byte[]) ip.getPixels(); byte[] max = (byte[]) ipMax.getPixels(); byte[] min = (byte[]) ipMin.getPixels(); for (int i = 0; i < pixels.length; i++) { pixels[i] = ((Math.abs((int) (max[i] & 0xff - pixels[i] & 0xff)) <= Math.abs((int) (pixels[i] & 0xff - min[i] & 0xff)))) ? object : backg; } // imp.updateAndDraw(); return; }
void MidGrey(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // See: Image Processing Learning Resourches HIPR2 // http://homepages.inf.ed.ac.uk/rbf/HIPR2/adpthrsh.htm ImagePlus Maximp, Minimp; ImageProcessor ip = imp.getProcessor(), ipMax, ipMin; int c_value = 0; int mid_gray; byte object; byte backg; if (par1 != 0) { IJ.log("MidGrey: changed c_value from :" + c_value + " to:" + par1); c_value = (int) par1; } if (doIwhite) { object = (byte) 0xff; backg = (byte) 0; } else { object = (byte) 0; backg = (byte) 0xff; } Maximp = duplicateImage(ip); ipMax = Maximp.getProcessor(); RankFilters rf = new RankFilters(); rf.rank(ipMax, radius, rf.MAX); // Maximum // Maximp.show(); Minimp = duplicateImage(ip); ipMin = Minimp.getProcessor(); rf.rank(ipMin, radius, rf.MIN); // Minimum // Minimp.show(); byte[] pixels = (byte[]) ip.getPixels(); byte[] max = (byte[]) ipMax.getPixels(); byte[] min = (byte[]) ipMin.getPixels(); for (int i = 0; i < pixels.length; i++) { pixels[i] = ((int) (pixels[i] & 0xff) > (int) (((max[i] & 0xff) + (min[i] & 0xff)) / 2) - c_value) ? object : backg; } // imp.updateAndDraw(); return; }
void Mean(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // See: Image Processing Learning Resourches HIPR2 // http://homepages.inf.ed.ac.uk/rbf/HIPR2/adpthrsh.htm ImagePlus Meanimp; ImageProcessor ip = imp.getProcessor(), ipMean; int c_value = 0; byte object; byte backg; if (par1 != 0) { IJ.log("Mean: changed c_value from :" + c_value + " to:" + par1); c_value = (int) par1; } if (doIwhite) { object = (byte) 0xff; backg = (byte) 0; } else { object = (byte) 0; backg = (byte) 0xff; } Meanimp = duplicateImage(ip); ImageConverter ic = new ImageConverter(Meanimp); ic.convertToGray32(); ipMean = Meanimp.getProcessor(); RankFilters rf = new RankFilters(); rf.rank(ipMean, radius, rf.MEAN); // Mean // Meanimp.show(); byte[] pixels = (byte[]) ip.getPixels(); float[] mean = (float[]) ipMean.getPixels(); for (int i = 0; i < pixels.length; i++) pixels[i] = ((int) (pixels[i] & 0xff) > (int) (mean[i] - c_value)) ? object : backg; // imp.updateAndDraw(); return; }
void Sauvola(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // Sauvola recommends K_VALUE = 0.5 and R_VALUE = 128. // This is a modification of Niblack's thresholding method. // Sauvola J. and Pietaksinen M. (2000) "Adaptive Document Image Binarization" // Pattern Recognition, 33(2): 225-236 // http://www.ee.oulu.fi/mvg/publications/show_pdf.php?ID=24 // Ported to ImageJ plugin from E Celebi's fourier_0.8 routines // This version uses a circular local window, instead of a rectagular one ImagePlus Meanimp, Varimp; ImageProcessor ip = imp.getProcessor(), ipMean, ipVar; double k_value = 0.5; double r_value = 128; byte object; byte backg; if (par1 != 0) { IJ.log("Sauvola: changed k_value from :" + k_value + " to:" + par1); k_value = par1; } if (par2 != 0) { IJ.log("Sauvola: changed r_value from :" + r_value + " to:" + par2); r_value = par2; } if (doIwhite) { object = (byte) 0xff; backg = (byte) 0; } else { object = (byte) 0; backg = (byte) 0xff; } Meanimp = duplicateImage(ip); ImageConverter ic = new ImageConverter(Meanimp); ic.convertToGray32(); ipMean = Meanimp.getProcessor(); RankFilters rf = new RankFilters(); rf.rank(ipMean, radius, rf.MEAN); // Mean // Meanimp.show(); Varimp = duplicateImage(ip); ic = new ImageConverter(Varimp); ic.convertToGray32(); ipVar = Varimp.getProcessor(); rf.rank(ipVar, radius, rf.VARIANCE); // Variance // Varimp.show(); byte[] pixels = (byte[]) ip.getPixels(); float[] mean = (float[]) ipMean.getPixels(); float[] var = (float[]) ipVar.getPixels(); for (int i = 0; i < pixels.length; i++) pixels[i] = ((int) (pixels[i] & 0xff) > (int) (mean[i] * (1.0 + k_value * ((Math.sqrt(var[i]) / r_value) - 1.0)))) ? object : backg; // imp.updateAndDraw(); return; }
void Phansalkar(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // This is a modification of Sauvola's thresholding method to deal with low contrast images. // Phansalskar N. et al. Adaptive local thresholding for detection of nuclei in diversity // stained // cytology images.International Conference on Communications and Signal Processing (ICCSP), // 2011, // 218 - 220. // In this method, the threshold t = mean*(1+p*exp(-q*mean)+k*((stdev/r)-1)) // Phansalkar recommends k = 0.25, r = 0.5, p = 2 and q = 10. In this plugin, k and r are the // parameters 1 and 2 respectively, but the values of p and q are fixed. // // Implemented from Phansalkar's paper description by G. Landini // This version uses a circular local window, instead of a rectagular one ImagePlus Meanimp, Varimp, Orimp; ImageProcessor ip = imp.getProcessor(), ipMean, ipVar, ipOri; double k_value = 0.25; double r_value = 0.5; double p_value = 2.0; double q_value = 10.0; byte object; byte backg; if (par1 != 0) { IJ.log("Phansalkar: changed k_value from :" + k_value + " to:" + par1); k_value = par1; } if (par2 != 0) { IJ.log("Phansalkar: changed r_value from :" + r_value + " to:" + par2); r_value = par2; } if (doIwhite) { object = (byte) 0xff; backg = (byte) 0; } else { object = (byte) 0; backg = (byte) 0xff; } Meanimp = duplicateImage(ip); ContrastEnhancer ce = new ContrastEnhancer(); ce.stretchHistogram(Meanimp, 0.0); ImageConverter ic = new ImageConverter(Meanimp); ic.convertToGray32(); ipMean = Meanimp.getProcessor(); ipMean.multiply(1.0 / 255); Orimp = duplicateImage(ip); ce.stretchHistogram(Orimp, 0.0); ic = new ImageConverter(Orimp); ic.convertToGray32(); ipOri = Orimp.getProcessor(); ipOri.multiply(1.0 / 255); // original to compare // Orimp.show(); RankFilters rf = new RankFilters(); rf.rank(ipMean, radius, rf.MEAN); // Mean // Meanimp.show(); Varimp = duplicateImage(ip); ce.stretchHistogram(Varimp, 0.0); ic = new ImageConverter(Varimp); ic.convertToGray32(); ipVar = Varimp.getProcessor(); ipVar.multiply(1.0 / 255); rf.rank(ipVar, radius, rf.VARIANCE); // Variance ipVar.sqr(); // SD // Varimp.show(); byte[] pixels = (byte[]) ip.getPixels(); float[] ori = (float[]) ipOri.getPixels(); float[] mean = (float[]) ipMean.getPixels(); float[] sd = (float[]) ipVar.getPixels(); for (int i = 0; i < pixels.length; i++) pixels[i] = ((ori[i]) > (mean[i] * (1.0 + p_value * Math.exp(-q_value * mean[i]) + k_value * ((sd[i] / r_value) - 1.0)))) ? object : backg; // imp.updateAndDraw(); return; }
void Niblack(ImagePlus imp, int radius, double par1, double par2, boolean doIwhite) { // Niblack recommends K_VALUE = -0.2 for images with black foreground // objects, and K_VALUE = +0.2 for images with white foreground objects. // Niblack W. (1986) "An introduction to Digital Image Processing" Prentice-Hall. // Ported to ImageJ plugin from E Celebi's fourier_0.8 routines // This version uses a circular local window, instead of a rectagular one ImagePlus Meanimp, Varimp; ImageProcessor ip = imp.getProcessor(), ipMean, ipVar; double k_value; int c_value = 0; byte object; byte backg; if (doIwhite) { k_value = 0.2; object = (byte) 0xff; backg = (byte) 0; } else { k_value = -0.2; object = (byte) 0; backg = (byte) 0xff; } if (par1 != 0) { IJ.log("Niblack: changed k_value from :" + k_value + " to:" + par1); k_value = par1; } if (par2 != 0) { IJ.log( "Niblack: changed c_value from :" + c_value + " to:" + par2); // requested feature, not in original c_value = (int) par2; } Meanimp = duplicateImage(ip); ImageConverter ic = new ImageConverter(Meanimp); ic.convertToGray32(); ipMean = Meanimp.getProcessor(); RankFilters rf = new RankFilters(); rf.rank(ipMean, radius, rf.MEAN); // Mean // Meanimp.show(); Varimp = duplicateImage(ip); ic = new ImageConverter(Varimp); ic.convertToGray32(); ipVar = Varimp.getProcessor(); rf.rank(ipVar, radius, rf.VARIANCE); // Variance // Varimp.show(); byte[] pixels = (byte[]) ip.getPixels(); float[] mean = (float[]) ipMean.getPixels(); float[] var = (float[]) ipVar.getPixels(); for (int i = 0; i < pixels.length; i++) pixels[i] = ((int) (pixels[i] & 0xff) > (int) (mean[i] + k_value * Math.sqrt(var[i]) - c_value)) ? object : backg; // imp.updateAndDraw(); return; }