Mercurial > repos > imgteam > imagej2_skeletonize3d
view imagej2_noise_jython_script.py @ 0:f6df6830d5ec draft
"planemo upload for repository https://github.com/bgruening/galaxytools/tree/master/tools/image_processing/imagej2 commit b08f0e6d1546caaf627b21f8c94044285d5d5b9c-dirty"
author | imgteam |
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date | Tue, 17 Sep 2019 16:57:15 -0400 |
parents | |
children | 768825d9034a |
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import sys from ij import IJ from ij import ImagePlus import jython_utils # Fiji Jython interpreter implements Python 2.5 which does not # provide support for argparse. error_log = sys.argv[ -19 ] input = sys.argv[ -18 ] image_datatype = sys.argv[ -17 ] noise = sys.argv[ -16 ] standard_deviation = sys.argv[ -15 ] radius = sys.argv[ -14 ] threshold = sys.argv[ -13 ] which_outliers = sys.argv[ -12 ] randomj = sys.argv[ -11 ] trials = sys.argv[ -10 ] probability = sys.argv[ -9 ] # Note the spelling - so things don't get confused due to Python lambda function. lammbda = sys.argv[ -8 ] order = sys.argv[ -7 ] mean = sys.argv[ -6 ] sigma = sys.argv[ -5 ] min = sys.argv[ -4 ] max = sys.argv[ -3 ] insertion = sys.argv[ -2 ] tmp_output_path = sys.argv[ -1 ] error = False # Open the input image file. image_plus = IJ.openImage( input ) bit_depth = image_plus.getBitDepth() image_type = image_plus.getType() # Create an ImagePlus object for the image. image_plus_copy = image_plus.duplicate() # Make a copy of the image. image_processor_copy = image_plus_copy.getProcessor() # Perform the analysis on the ImagePlus object. if noise == 'add_noise': IJ.run( image_plus_copy, "Add Noise", "" ) elif noise == 'add_specified_noise': IJ.run( image_plus_copy, "Add Specified Noise", "standard=&standard_deviation" ) elif noise == 'salt_and_pepper': IJ.run( image_plus_copy, "Salt and Pepper", "" ) elif noise == 'despeckle': IJ.run( image_plus_copy, "Despeckle", "" ) elif noise == 'remove_outliers': IJ.run( image_plus_copy, "Remove Outliers", "radius=&radius threshold=&threshold which=&which_outliers" ) elif noise == 'remove_nans': if bit_depth == 32: IJ.run( image_plus_copy, "Remove NaNs", "" ) else: # When Galaxy metadata for images is enhanced to include information like this, # we'll be able to write tool validators rather than having to stop the job in # an error state. msg = "Remove NaNs requires a 32-bit image, the selected image is %d-bit" % bit_depth jython_utils.handle_error( error_log, msg ) error = True elif noise == 'rof_denoise': if image_type == ImagePlus.GRAY32: IJ.run( image_plus_copy, "ROF Denoise", "" ) else: msg = "ROF Denoise requires an image of type 32-bit grayscale, the selected image is %d-bit" % ( bit_depth ) jython_utils.handle_error( error_log, msg ) error = True elif noise == 'randomj': if randomj == 'randomj_binomial': IJ.run( image_plus_copy, "RandomJ Binomial", "trials=&trials probability=&probability insertion=&insertion" ) elif randomj == 'randomj_exponential': IJ.run( image_plus_copy, "RandomJ Exponential", "lambda=&lammbda insertion=&insertion" ) elif randomj == 'randomj_gamma': IJ.run( image_plus_copy, "RandomJ Gamma", "order=&order insertion=&insertion" ) elif randomj == 'randomj_gaussian': IJ.run( image_plus_copy, "RandomJ Gaussian", "mean=&mean sigma=&sigma insertion=&insertion" ) elif randomj == 'randomj_poisson': IJ.run( image_plus_copy, "RandomJ Poisson", "mean=&mean insertion=&insertion" ) elif randomj == 'randomj_uniform': IJ.run( image_plus_copy, "RandomJ Uniform", "min=&min max=&max insertion=&insertion" ) if not error: # Save the ImagePlus object as a new image. IJ.saveAs( image_plus_copy, image_datatype, tmp_output_path )