Ejemplo n.º 1
0
def generate_cell_masks(watershed_seeds_imp,
                        intensity_channel_imp,
                        find_edges=False):
    """perform marker-driven watershed on image in intensity_channel_imp"""
    intensity_channel_title = intensity_channel_imp.getTitle()
    watershed_seed_title = watershed_seeds_imp.getTitle()
    title = os.path.splitext(intensity_channel_title)[0]
    intensity_channel_imp.show()
    watershed_seeds_imp.show()
    if find_edges:
        IJ.run(intensity_channel_imp, "Find Edges", "")
    IJ.run(
        intensity_channel_imp, "Marker-controlled Watershed",
        "input={} marker={} mask=None binary calculate use".format(
            intensity_channel_title, watershed_seed_title))
    ws_title = "{}-watershed.tif".format(title)
    watershed_imp = WM.getImage(ws_title)
    if watershed_imp is None:
        if ws_title[-3:] == 'tif':
            ws_title = os.path.splitext(ws_title)[0]
        else:
            ws_title = ws_title + '.tif'
        watershed_imp = WM.getImage(ws_title)
    IJ.setRawThreshold(watershed_imp, 1,
                       watershed_imp.getProcessor().maxValue() + 1, "Red")
    binary_cells_imp = ImagePlus("thresholded",
                                 watershed_imp.createThresholdMask())
    IJ.run(binary_cells_imp, "Kill Borders", "")
    kb_thresh_title = binary_cells_imp.getTitle()
    binary_cells_imp.close()
    binary_cells_imp = WM.getImage("{}-killBorders".format(kb_thresh_title))
    watershed_imp.close()
    intensity_channel_imp.changes = False
    intensity_channel_imp.close()
    return binary_cells_imp
Ejemplo n.º 2
0
def generate_cell_masks(watershed_seeds_imp, intensity_channel_imp):
    """perform marker-driven watershed on image in intensity_channel_imp"""
    IJ.run(
        imp, "Marker-controlled Watershed",
        "input={} marker=Nuclei mask=None binary calculate use".format(
            os.path.splitext(intensity_channel_imp.getTitle())[0]))
    ws_title = "{}-watershed".format(intensity_channel_imp.getTitle())
    watershed_imp = WM.getImage(ws_title)
    IJ.setRawThreshold(watershed_imp, 1,
                       watershed_imp.getProcessor().maxValue(), "Red")
    binary_cells_imp = ImagePlus("thresholded",
                                 watershed_imp.createThresholdMask())
    IJ.run(binary_cells_imp, "Kill Borders", "")
    kb_thresh_title = binary_cells_imp.getTitle()
    binary_cells_imp.close()
    binary_cells_imp = WM.getImage("{}-killBorders".format(kb_thresh_title))
    watershed_imp.close()
    return binary_cells_imp
def findCells(imp, rm, channel, noisetol, thresh):
    '''
	Function for finding cells as local maxima and creating an ROI showing them
	imp: ImagePlus
	rm: the current ROI manager
	channel, int: the channel being processed (used for ROI name)
	noisetol, thresh, ints: noise tolerance and pixel value threshold for findMaxima

	returns the count
	'''

    # set the channel
    imp.setC(channel)

    # find maxima
    ip = imp.getProcessor()
    mf = MaximumFinder()
    maxima = mf.findMaxima(ip, noisetol, thresh, MaximumFinder.SINGLE_POINTS,
                           False, False)

    findmaximashow = ImagePlus("Found Maxima", maxima)
    findmaximashow.show()  # an image of all the points
    maximaip = findmaximashow.getProcessor()
    maximahist = maximaip.getHistogram()
    cellCount = maximahist[255]

    if cellCount != 0:
        IJ.setRawThreshold(findmaximashow, 255, 255, "red")
        IJ.run(findmaximashow, "Create Selection", "")
        rm.addRoi(findmaximashow.getRoi()
                  )  # a selection consisting of all the points

    # close maxima image if present
    if findmaximashow:
        findmaximashow.close()

    return cellCount
# - commands generally do not work on the active image but need a imp (ImagePlus) object to operate on.

from ij import IJ
from ij import Prefs

# Get input from user
#@File image (label="input image")
#@File (style="directory", label="output directory") outputDirectory

# Open image
IJ.run("Close All")
imp = IJ.openImage(str(image))
title = imp.getTitle()

# Binarize (Threshold)
IJ.setRawThreshold(imp, 24, 255, None)
Prefs.blackBackground = True
IJ.run(imp, "Convert to Mask", "")

# Connected components
IJ.run(imp, "Connected Components Labeling", "connectivity=4 type=[16 bits]")

# Measure shape
IJ.run("Region Morphometry")

# Export results
IJ.saveAs("Results",
          str(outputDirectory) + "/" + title + ".csv")

# Clean up
IJ.run("Close All")
# - commands generally do not work on the active image but need a imp (ImagePlus) object to operate on.

from ij import IJ;
from ij import Prefs;

# Get input from user
#@File image (label="input image")
#@File (style="directory", label="output directory") outputDirectory

# Open image
IJ.run("Close All");
imp = IJ.openImage( str(image) );
title = imp.getTitle();

# Binarize (Threshold)
IJ.setRawThreshold(imp, 24, 255, None);
Prefs.blackBackground = True;
IJ.run(imp, "Convert to Mask", "");

# Connected components
IJ.run(imp, "Connected Components Labeling", "connectivity=4 type=[16 bits]");

# Measure shape
IJ.run("Region Morphometry");

# Export results
IJ.saveAs("Results", str(outputDirectory) + "/" + title + ".csv");

# Clean up
IJ.run("Close All");
Ejemplo n.º 6
0
from ij import IJ, ImagePlus
from ij.plugin import Thresholder

inputImage = IJ.openImage(
    "https://github.com/NEUBIAS/training-resources/raw/master/image_data/xy_8bit__two_cells.tif"
)
IJ.setRawThreshold(inputImage, 44, 255, None)
binaryImage = ImagePlus('Binary image 2 nuclei',
                        Thresholder.createMask(inputImage))
binaryImage.show()
IJ.setRawThreshold(inputImage, 88, 255, None)
binaryImage_1 = ImagePlus('Binary image 1 nuclei',
                          Thresholder.createMask(inputImage))
binaryImage_1.show()
Ejemplo n.º 7
0
close_open_non_image_window("Results")
close_open_non_image_window("ROI Manager")
IJ.run("Close All")
imp = IJ.openImage(img_dir + "/nalco-img-04cr.tif")
ti = imp.getShortTitle()
imp.setTitle(ti)
imp.show()

imp_work = imp.duplicate()
imp_work.setTitle("Processed")
imp_work.show()
IJ.run(imp_work, "Median...", "radius=" + mf_px)
IJ.setAutoThreshold(imp_work, "Default dark")
IJ.setAutoThreshold(imp_work, "Huang")
IJ.setRawThreshold(imp_work, 0, 813, None)
imp_work.show()
IJ.run("Make Binary")
IJ.run(imp_work, "Fill Holes", "")
imp_work = run_closing(imp_work)
# imp_work = run_closing(imp_work)
imp_work = run_closing(imp_work)
IJ.run(imp_work, "Dilate", "")
IJ.run("Make Binary")
IJ.run("Fill Holes", "")
imp_work.show()
IJ.run("Watershed", "")
IJ.run("Set Measurements...", "area perimeter fit shape display add redirect=None decimal=3")

ana_str_2 = "size=" + min_px + "-Infinity pixel circularity=" + min_circ + "-1.00 display exclude clear add"
IJ.run("Analyze Particles...", ana_str_2)
Ejemplo n.º 8
0
from ij.gui import ShapeRoi
from ij.plugin.frame import RoiManager

from org.jfree.graphics2d.svg import SVGGraphics2D, SVGUtils
import jmFijiGen as jmg

# Start clean...
IJ.run("Close All")
jmg.close_open_non_image_window("Results")
jmg.close_open_non_image_window("ROI Manager")

imp = IJ.openImage("http://imagej.nih.gov/ij/images/blobs.gif")
imp.show()
IJ.setAutoThreshold(imp, "Default")
imp.show()
IJ.setRawThreshold(imp, 126, 255, None)
# The recorder never records this...
IJ.run("Make Binary")
IJ.run("Convert to Mask")
IJ.run("Set Measurements...", "area perimeter shape display add redirect=None decimal=3")
IJ.run(imp, "Analyze Particles...", "size=20-Infinity circularity=0.2-1.00 show=Overlay display exclude clear add");
rm = RoiManager.getInstance()
if rm is None:
	print 'None'
	sys.exit()  
 
# convert ROIs in RoiManager to an array of shapeRois
jrois = rm.getRoisAsArray()
srois = [ShapeRoi(jroi) for jroi in jrois]
# http://www.jfree.org/jfreesvg/javadoc/
g2 = SVGGraphics2D(imp.getWidth(), imp.getHeight())
Ejemplo n.º 9
0
# to resliced image)

imp.killRoi();
IJ.run(imp, "Reslice [/]...", "output=1.000 start=Top avoid");
rot_imp = IJ.getImage();
crop_roi = Roi(10, 0, rot_imp.getWidth()-20, rot_imp.getHeight());
rot_imp.setRoi(crop_roi);
rot_imp.crop();
rot_imp.show();
WaitForUserDialog("pause").show();
split_ch = ChannelSplitter().split(rot_imp);
mch_imp = split_ch[0];
egfp_imp = split_ch[1];
roi_imp = split_ch[2];
zproj_imp = ZProjector.run(roi_imp, "max");
IJ.setRawThreshold(zproj_imp, 33153, 65535, None);
IJ.run(zproj_imp, "Make Binary", "")
zproj_imp.show();
raise error;
IJ.run(zproj_imp, "Skeletonize", "");
IJ.run(zproj_imp, "Create Selection", "");
roi = zproj_imp.getRoi();
floatpoly = roi.getContainedFloatPoints();
roi = PolygonRoi(floatpoly, Roi.FREELINE);
zproj_imp.setRoi(roi);
WaitForUserDialog("pause").show();

#IJ.setTool("freeline");
#WaitForUserDialog("Draw a line").show();
#IJ.run(zproj_imp, "Fit Spline", "");
#roi = zproj_imp.getRoi();
Ejemplo n.º 10
0
def analyse(cwd, user, imagefolder, stats, experiments, multi, Rloc2,
            subfoldernames, names, statsfolderPath, cwdR):
    """ Main image analysis
        Gets user image analysis settings from the .csv file.
        If multiple experiments have been selected by the user
        (multi) each subfolder will be looped through. A nested
        loop will then interate through each .tif image and
        analyse. A .csv file will be produced for each folder
        analysed with the name of each image and its % neurite
        density and % myelination. A summary csv file will also
        be produced with the average % neurite density and %
        myelination for each subfolder. If statistical analysis
        has been selected (stats) then MyelinJ's Rscript will be
        run via the command line. If multple experiments is not
        selected then all of the images within the selected
        folder will be analysed together and no summary .csv will
        be produced.
        Independ of the analysis settings defined, a processed
        myelin channel image and a processed neurite channel
        image will be saved. The images can be any number of
        subdirectories (folders within folders).
        Parameters
        ----------
        cwd : string
            Path for current working directory (location of
            MyelinJ folder in Fiji).
        user: string
            User name
        imagefolder: string
            Path to .tiff image folder(s) defined by user.
        stats: boolean
            Perform statistical analysing using R?
        experiments: 2D list of strings
            list of all the subfolders (experiments) that are in each
            experimental condition.
        multi: boolean
            Analyse multiple experiments?
        Rloc2: string
            file path to Rscript location
        subfoldernames: string
            name of each subfolder which denoates each individual
            experiment, if multple experiments are being analysed.
        names: array
            array of textfields for each experimental condition defined by
            user. User will enter the name of each experimental condition.
        statsfolderPath: string
            file path to the create statsfolder.
        cwdR: string
            file path to MyelinJstats.R
        """
    # read settings from the user name CSV
    bg = False
    readsettings = []
    imagenames = []
    neuritedensity = []
    myelinoverlay = []
    myelinaverage2 = []
    neuriteaverage2 = []
    root = cwd
    filename = user
    fullpath = os.path.join(root, filename)
    f = open(fullpath, 'rb')
    readCSV = csv.reader(f)
    for row in readCSV:
        readsettings.append(row[0])
        readsettings.append(row[1])
        readsettings.append(row[2])
        readsettings.append(row[3])
        readsettings.append(row[4])
        readsettings.append(row[5])
        readsettings.append(row[6])
    f.close()
    i = 0

    for i in range(len(subfoldernames)):
        # if multiple experimental conditions has been selected each folder is treated as a
        # separate experiment and looped through separately otherwise all folders will be
        # treated as one experiment this only works for sub directories within the main folder.
        # Further folders will be ignored (each image can be in its own folder for example)
        if multi is True:
            # if multiple experiments are being analysed the file path is changed to the
            # current subfolder
            settings2 = os.path.join(imagefolder, subfoldernames[i])
            if "Windows" in OS:
                settings2 = settings2 + "\\"
            elif "Mac" in OS:
                settings2 = settings2 + "/"
        else:
            settings2 = imagefolder
        # loop through all .tiff files in location
        for root, dirs, files in os.walk(settings2):
            for name in files:
                if name.endswith((".tif")):
                    imagenames.append(os.path.join(name))
                    # open .tiff image, split channels and
                    # convert to 8bit grey scale.
                    imp = IJ.openImage(os.path.join(root, name))
                    g = int(readsettings[4])
                    r = int(readsettings[5])
                    imp = ChannelSplitter.split(imp)
                    green = imp[g]
                    red = imp[r]
                    conv = ImageConverter(red)
                    conv.convertToGray8()
                    conv = ImageConverter(green)
                    conv.convertToGray8()

                    # thresholding to select cell bodies
                    green2 = green.duplicate()
                    if (readsettings[0] != "0") or (readsettings[1] != "0"):
                        bg = True
                        IJ.setAutoThreshold(green2, readsettings[2])
                        IJ.setRawThreshold(green2, int(readsettings[0]),
                                           int(readsettings[1]), None)
                        Prefs.blackBackground = True
                        IJ.run(green2, "Convert to Mask", "")
                        IJ.run(green2, "Invert LUT", "")
                        if readsettings[7] != "0":
                            IJ.run(green2, "Make Binary", "")
                            IJ.run(
                                green2, "Remove Outliers...", "radius=" +
                                readsettings[7] + " threshold=50 which=Dark")

                    # CLAHE and background subtraction
                    if readsettings[8] == "True":
                        mpicbg.ij.clahe.Flat.getFastInstance().run(
                            green, 127, 256, 3, None, False)
                    if readsettings[9] == "True":
                        calc = ImageCalculator()
                        green = calc.run("Subtract create", green, red)
                    elif readsettings[6] == "True":
                        IJ.run(green, "Subtract Background...", "rolling=50")
                    if readsettings[10] != "0":
                        IJ.run(green, "Subtract...",
                               "value=" + readsettings[10])

                    # run frangi vesselness
                    pixelwidth = str(green.getCalibration().pixelWidth)
                    IJ.run(
                        green, "Frangi Vesselness (imglib, experimental)",
                        "number=1 minimum=" + pixelwidth + " maximum=" +
                        pixelwidth)
                    green = IJ.getImage()

                    # convert frangi vesselness image to 8bit grey scale
                    conv = ImageConverter(green)
                    conv.convertToGray8()
                    IJ.run(green, "Convert to Mask", "")

                    # remove cell bodies
                    if bg is True:
                        green = ImageCalculator().run("Subtract create", green,
                                                      green2)

                    # run grey scale morphology filter from MorpholibJ
                    if readsettings[11] != "0":
                        green = green.getProcessor()
                        algo = BoxDiagonalOpeningQueue()
                        algo.setConnectivity(4)
                        result = algo.process(green, int(readsettings[11]))
                        green = ImagePlus("result", result)
                    IJ.run(green, "Invert LUT", "")

                    if len(readsettings) > 14:
                        # sparse neurite image analysis
                        if readsettings[15] == "True":
                            IJ.run(
                                red, "Enhance Local Contrast (CLAHE)",
                                "blocksize=127 histogram=256 maximum=3 mask=*None* fast_(less_accurate)"
                            )
                        if readsettings[14] == "True":
                            IJ.run(red, "Subtract Background...", "rolling=50")
                        IJ.setAutoThreshold(red, readsettings[16])
                        IJ.setRawThreshold(red, int(readsettings[17]),
                                           int(readsettings[18]), None)
                        IJ.run(red, "Convert to Mask", "")
                        IJ.run(red, "Invert LUT", "")
                    else:
                        # dense neurite image analysis
                        IJ.run(
                            red, "Normalize Local Contrast",
                            "block_radius_x=40 block_radius_y=40 standard_deviations="
                            + readsettings[12] + " center stretch")
                        IJ.run(red, "Auto Threshold", "method=Default white")
                        IJ.run(red, "Invert LUT", "")
                    if readsettings[3] == "True":
                        IJ.run(red, "Despeckle", "")

                    IJ.saveAs(red, "Jpeg", settings2 + name + "neurites")
                    # get number of neurite pixels

                    # get number of neurite pixels
                    statsneurite = red.getProcessor()
                    statsneurite = statsneurite.getHistogram()
                    neuritedensity.append(statsneurite[255])
                    IJ.saveAs(green, "Jpeg", settings2 + name + "myelinFinal")

                    # get number of myelin pixels
                    statsmyelin = green.getProcessor()
                    statsmyelin = statsmyelin.getHistogram()
                    myelinoverlay.append(statsmyelin[255])
                    closeallimages()

                    # get pixel total of image
                    whitepixels = (statsneurite[0])
                    blackpixels = (statsneurite[255])

        totalpixels = whitepixels + blackpixels
        totalpixels = [totalpixels] * len(neuritedensity)

        # for each image calculate % myelination as number of myelin pixels
        # divided by the number of neurite pixels * 100
        myelinoverlay = [
            x1 / x2 * 100 for (x1, x2) in zip(myelinoverlay, neuritedensity)
        ]
        myelinaverage = sum(myelinoverlay) / len(myelinoverlay)
        myelinaverage2.append(myelinaverage)

        # for each image calculate % neurite density as neurite pixels divided
        # by the total number of pixels in the image * 100.
        neuritedensity = [
            x1 / x2 * 100 for (x1, x2) in zip(neuritedensity, totalpixels)
        ]
        neuriteaverage = sum(neuritedensity) / len(neuritedensity)
        neuriteaverage2.append(neuriteaverage)
        name = "Image names"
        green = "% myelination"
        red = "% neurite density"
        imagenames = [name] + imagenames
        neuritedensity = [red] + neuritedensity
        myelinoverlay = [green] + myelinoverlay
        result = []
        result.append(imagenames)
        result.append(neuritedensity)
        result.append(myelinoverlay)

        root = settings2
        filename = "Results.csv"
        fullpath = os.path.join(root, filename)
        f = open(fullpath, 'wb')
        writer = csv.writer(f)
        for d in range(len(result)):
            row = [result[d]]
            writer.writerows(row)
        f.close()

        # must be reset to 0 for each iteration.
        y = 0
        r = 0

        # if statistical analysis is being performed the results .csv file
        # is also saved to a subfolder within the statistical analysis folder
        # which denotes the experimental condition the results belong to.
        if stats is True:
            # nested for loop to identify correct experimental condition
            # for the current subfolder being analysed.
            for y in range(0, len(experiments)):
                for r in range(0, len(experiments[0])):
                    if experiments[y][r] == subfoldernames[i]:
                        if "Windows" in OS:
                            root = imagefolder + "\\statistical analysis\\" + names[
                                y].getText()
                        elif "Mac" in OS:
                            root = imagefolder + "/statistical analysis/" + names[
                                y].getText()
                        filename = subfoldernames[i] + ".csv"
                        fullpath = os.path.join(root, filename)
                        f = open(fullpath, 'wb')
                        writer = csv.writer(f)
                        for e in range(len(result)):
                            row = [result[e]]
                            writer.writerows(row)
                        f.close()

                        break
        cwd2 = os.getcwd()
        for files in os.listdir(cwd2):
            if files.endswith(".csv"):
                os.remove(os.path.join(cwd2, files))
        imagenames = []
        myelinoverlay = []
        neuritedensity = []

    # create .csv summary sheet with average % neurite density
    # and average % myelination for each subfolder (experiment).
    if multi is True:
        name = "Folder name"
        imagenames = [name] + subfoldernames
        neuritedensity = [red] + neuriteaverage2
        myelinoverlay = [green] + myelinaverage2
        result = []
        result.append(imagenames)
        result.append(neuritedensity)
        result.append(myelinoverlay)
        if "Windows" in OS:
            root = imagefolder + "\\"
        elif "Mac" in OS:
            root = imagefolder + "/"
        filename = "Result-Summary.csv"
        fullpath = os.path.join(root, filename)
        f = open(fullpath, 'wb')
        writer = csv.writer(f)
        for p in range(len(result)):
            row = [result[p]]
            writer.writerows(row)
        f.close()
        imagenames = []
        myelinoverlay = []
        neuritedensity = []

    # Run Rscript for statistical analysis via the command line
    if stats is True:
        cmd = Rloc2 + " " + cwdR + " " + statsfolderPath
        Runtime.getRuntime().exec(cmd)
    Finished()
                       1)  # default is 1 decimal
    gd.showDialog()
    Pixel_size = gd.getNextNumber(
    )  #6.4 # ENTER mm, remember tolerance is +/-30%
    return Pixel_size


######### open image using dialogue box
#imp = IJ.getImage()
original = IJ.openImage(getFile())
original.show()

########## Use thresholding and selection to define UFOV ###################################################################################
#IJ.run("ROI Manager...", "")			# not sure if I need this
IJ.setRawThreshold(
    original, 1, 255,
    '')  # background pixels have value 0. See IMAGE>ADJUST>THRESHOLD
IJ.run(original, "Create Selection",
       "")  # add bounding box. See EDIT>SELECTION
IJ.run(original, "To Bounding Box",
       "")  # this box defines the UFOV. See EDIT>SELECTION
IJ.resetThreshold(
    original)  # get back original now UFOV is definedthresholding

UFOV = Duplicator().run(
    original)  # duplicate the original image, only the CFOV
UFOV.setTitle("UFOV")
UFOV.show()

CFOV_fraction = 0.75  # choose the fraction of the UFOV that defines the CFOV
IJ.run(original, "Scale... ", "x=" + str(CFOV_fraction) + " y=" +
Ejemplo n.º 12
0
Date        Who  What
----------  ---  -------------------------------------------
2019-07-17  JRM  Prototype. Not sure it makes sense...

"""

IJ.run("Close All")

imp = IJ.openImage(
    "/Users/jrminter/Downloads/Fiji Manual Resources/Demo Images/Widefield Images/Segmentation/Nuclei.tif"
)
imp.show()
IJ.setAutoThreshold(imp, "Default")
IJ.run("Make Binary")
IJ.run("Convert to Mask")
IJ.run(imp, "Watershed", "")
IJ.run(imp, "Options...", "iterations=1 count=1 black edm=16-bit do=Nothing")
IJ.run(imp, "Invert", "")
IJ.run(imp, "Distance Map", "")

edm = WindowManager.getImage("EDM of Nuclei")
edm.show()
# IJ.run(edm, "8-bit", "")
IJ.run(edm, "16_colors", "")
IJ.run(edm, "Apply LUT", "")
edm.updateAndRepaintWindow()
IJ.setAutoThreshold(edm, "Default light")
IJ.setRawThreshold(edm, 1, 65535, None)
edm.show()
IJ.run(edm, "Measure", "")
# POINT_SELECTION is supposed to give just that but can't figure out how to get it in the manager
# https://stackoverflow.com/questions/26526269/image-analysis-finding-proteins-in-an-image
# https://github.com/bgruening/galaxytools/blob/18b441b263846cece9c5527cab0de66a54ecba3a/tools/image_processing/imagej2/imagej2_find_maxima/jython_script.py

maxima = mf.findMaxima(ip, 100.0, THRESH, MaximumFinder.SINGLE_POINTS, False,
                       False)

findmaximashow = ImagePlus("Found Maxima", maxima)
findmaximashow.show()  # an image of all the points
maximaip = findmaximashow.getProcessor()
maximahist = maximaip.getHistogram()
CountMethod2 = maximahist[255]
print "Using the findMaxima method with a threshold of " + str(
    THRESH) + ", I found " + str(CountMethod2) + " maxima."

IJ.setRawThreshold(findmaximashow, 255, 255, "red")
IJ.run(findmaximashow, "Create Selection", "")
rm.addRoi(findmaximashow.getRoi())
rm.rename(1, "Maxima with threshold")

# ---- METHOD 3-4: API getMaxima WITH THE POINTS COUNTED OR ADDED TO THE RESULTS TABLE

maxima = mf.getMaxima(ip, 100.0, False)
CountMethod3 = maxima.npoints
print "Using the getMaxima method with no threshold , I found " + str(
    CountMethod3) + " maxima."

rt = ResultsTable()
for i in range(maxima.npoints):
    rt.incrementCounter()
    rt.addValue("X", maxima.xpoints[i])
Ejemplo n.º 14
0
leaf_csv_path = git_home + "/tips/ImageJ/png/maple-leaf.csv"
print(leaf_path)
imp_leaf = IJ.openImage(leaf_path)
imp_leaf.show()
channels = ChannelSplitter.split(imp_leaf)
# red
channels[0].show()
# green
channels[1].show()
# blue
channels[2].show()
# work
imp_bin = channels[2].duplicate()
imp_bin.setTitle("binary")
IJ.setAutoThreshold(imp_bin, "Huang")
IJ.setRawThreshold(imp_bin, 0, 233, None)
IJ.run(imp_bin, "Set Measurements...",
       "area mean perimeter shape display add redirect=None decimal=3")
IJ.run(imp_bin, "Analyze Particles...", "display clear add")
imp_bin.show()

roi_num = 0
add_roi_and_update(channels[0], rm, roi_num)
add_roi_and_update(channels[1], rm, roi_num)
add_roi_and_update(channels[2], rm, roi_num)
add_roi_and_update(imp_leaf, rm, roi_num)
imp_leaf.show()

rt = Analyzer.getResultsTable()
rt.reset()
def getPixel():  # Get pixel size from user with dialog box. could return python dict or make custom class? Note user can return a NaN if doesnt enter numeric
	gd = GenericDialog("Pixel")
	gd.addNumericField("Pixel size desired (mm)", 6.4, 1) # default is 1 decimal
	gd.showDialog()
	Pixel_size = gd.getNextNumber()	#6.4 # ENTER mm, remember tolerance is +/-30%
	return Pixel_size

######### open image using dialogue box
#imp = IJ.getImage()   
original = IJ.openImage(getFile())
original.show()


########## Use thresholding and selection to define UFOV ###################################################################################
#IJ.run("ROI Manager...", "")			# not sure if I need this
IJ.setRawThreshold(original, 1, 255,'')  # background pixels have value 0. See IMAGE>ADJUST>THRESHOLD
IJ.run(original, "Create Selection", "")   # add bounding box. See EDIT>SELECTION
IJ.run(original,"To Bounding Box", "")    # this box defines the UFOV. See EDIT>SELECTION
IJ.resetThreshold(original)		# get back original now UFOV is definedthresholding

UFOV = Duplicator().run(original) # duplicate the original image, only the CFOV
UFOV.setTitle("UFOV")
UFOV.show() 

CFOV_fraction = 0.75  # choose the fraction of the UFOV that defines the CFOV
IJ.run(original,"Scale... ", "x="+str(CFOV_fraction)+" y="+str(CFOV_fraction)+" centered") # rescale bounding box to get CFOV

CFOV = Duplicator().run(original) # duplicate the original image, only the CFOV
CFOV.setTitle("CFOV")
CFOV.show()