Mercurial > repos > imgteam > color_deconvolution
view color_deconvolution.py @ 3:be70a57d7174 draft default tip
planemo upload for repository https://github.com/BMCV/galaxy-image-analysis/tree/master/tools/color_deconvolution/ commit 07aba15c8f753d650fee9cdd455896a77086a615
author | imgteam |
---|---|
date | Tue, 29 Oct 2024 13:49:19 +0000 |
parents | 612aa1478fe1 |
children |
line wrap: on
line source
import argparse import sys import warnings import numpy as np import skimage.color import skimage.io import skimage.util from sklearn.decomposition import FactorAnalysis, FastICA, NMF, PCA convOptions = { 'hed2rgb': lambda img_raw: skimage.color.hed2rgb(img_raw), 'hsv2rgb': lambda img_raw: skimage.color.hsv2rgb(img_raw), 'lab2lch': lambda img_raw: skimage.color.lab2lch(img_raw), 'lab2rgb': lambda img_raw: skimage.color.lab2rgb(img_raw), 'lab2xyz': lambda img_raw: skimage.color.lab2xyz(img_raw), 'lch2lab': lambda img_raw: skimage.color.lch2lab(img_raw), 'luv2rgb': lambda img_raw: skimage.color.luv2rgb(img_raw), 'luv2xyz': lambda img_raw: skimage.color.luv2xyz(img_raw), 'rgb2hed': lambda img_raw: skimage.color.rgb2hed(img_raw), 'rgb2hsv': lambda img_raw: skimage.color.rgb2hsv(img_raw), 'rgb2lab': lambda img_raw: skimage.color.rgb2lab(img_raw), 'rgb2luv': lambda img_raw: skimage.color.rgb2luv(img_raw), 'rgb2rgbcie': lambda img_raw: skimage.color.rgb2rgbcie(img_raw), 'rgb2xyz': lambda img_raw: skimage.color.rgb2xyz(img_raw), 'rgbcie2rgb': lambda img_raw: skimage.color.rgbcie2rgb(img_raw), 'xyz2lab': lambda img_raw: skimage.color.xyz2lab(img_raw), 'xyz2luv': lambda img_raw: skimage.color.xyz2luv(img_raw), 'xyz2rgb': lambda img_raw: skimage.color.xyz2rgb(img_raw), 'rgb_from_hed': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_hed), 'rgb_from_hdx': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_hdx), 'rgb_from_fgx': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_fgx), 'rgb_from_bex': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_bex), 'rgb_from_rbd': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_rbd), 'rgb_from_gdx': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_gdx), 'rgb_from_hax': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_hax), 'rgb_from_bro': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_bro), 'rgb_from_bpx': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_bpx), 'rgb_from_ahx': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_ahx), 'rgb_from_hpx': lambda img_raw: skimage.color.combine_stains(img_raw, skimage.color.rgb_from_hpx), 'hed_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.hed_from_rgb), 'hdx_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.hdx_from_rgb), 'fgx_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.fgx_from_rgb), 'bex_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.bex_from_rgb), 'rbd_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.rbd_from_rgb), 'gdx_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.gdx_from_rgb), 'hax_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.hax_from_rgb), 'bro_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.bro_from_rgb), 'bpx_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.bpx_from_rgb), 'ahx_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.ahx_from_rgb), 'hpx_from_rgb': lambda img_raw: skimage.color.separate_stains(img_raw, skimage.color.hpx_from_rgb), 'pca': lambda img_raw: np.reshape(PCA(n_components=3).fit_transform(np.reshape(img_raw, [-1, img_raw.shape[2]])), [img_raw.shape[0], img_raw.shape[1], -1]), 'nmf': lambda img_raw: np.reshape(NMF(n_components=3, init='nndsvda').fit_transform(np.reshape(img_raw, [-1, img_raw.shape[2]])), [img_raw.shape[0], img_raw.shape[1], -1]), 'ica': lambda img_raw: np.reshape(FastICA(n_components=3).fit_transform(np.reshape(img_raw, [-1, img_raw.shape[2]])), [img_raw.shape[0], img_raw.shape[1], -1]), 'fa': lambda img_raw: np.reshape(FactorAnalysis(n_components=3).fit_transform(np.reshape(img_raw, [-1, img_raw.shape[2]])), [img_raw.shape[0], img_raw.shape[1], -1]) } parser = argparse.ArgumentParser() parser.add_argument('input_file', type=argparse.FileType('r'), default=sys.stdin, help='input file') parser.add_argument('out_file', type=argparse.FileType('w'), default=sys.stdin, help='out file (TIFF)') parser.add_argument('conv_type', choices=convOptions.keys(), help='conversion type') args = parser.parse_args() img_in = skimage.io.imread(args.input_file.name)[:, :, 0:3] res = convOptions[args.conv_type](img_in) res[res < -1] = -1 res[res > +1] = +1 with warnings.catch_warnings(): warnings.simplefilter('ignore') res = skimage.util.img_as_uint(res) # Attention: precision loss skimage.io.imsave(args.out_file.name, res, plugin='tifffile')