Source code for node_channels

# This file is part of Sympathy for Data.
# Copyright (c) 2017, Combine Control Systems AB
#
# Sympathy for Data is free software: you can redistribute it and/or modify
# it under the terms of the GNU General Public License as published by
# the Free Software Foundation, version 3 of the License.
#
# Sympathy for Data is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the
# GNU General Public License for more details.
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# You should have received a copy of the GNU General Public License
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from sympathy.api import node
from sympathy.api.nodeconfig import Ports, Tag, Tags

import numpy as np
from sylib.imageprocessing.image import ImagePort


[docs]class SplitChannels(node.Node): """ Copies the given channels from the input image to the first output image, remaining channels are copied to second output image. """ name = 'Split Image Channels' author = 'Mathias Broxvall' version = '0.1' icon = 'image_split_channels.svg' description = ('Copies the given channels from the input image to the ' 'first output image, remaining channels are copied to ' 'second output image') nodeid = 'syip.splitchannels' tags = Tags(Tag.ImageProcessing.Layers) parameters = node.parameters() parameters.set_string( 'selected_channels', label='selected channels', description=('Comma separated list of channels to send to first image ' 'output.\n\nCommon channel numbers and names:\n 0 ' '(red/gray), 1 (green), 2 (blue).\n ' 'Alpha is always last channel.'), value='0') inputs = Ports([ ImagePort('Input image', name='input'), ]) outputs = Ports([ ImagePort('Image with selected channels', name='output1'), ImagePort('All non-selected channels', name='output2'), ]) def execute(self, node_context): im = node_context.input['input'].get_image() channels_str = node_context.parameters['selected_channels'].value def lookup_channel(s, depth): kv = {'r': 0, 'g': 1, 'b': 2, 'red': 0, 'green': 1, 'blue': 2, 'gray': 0, 'grey': 0, 'hue': 0, 'sat': 1, 'saturation': 1, 'val': 2 if depth in [3, 4] else 0, 'value': 2 if depth in [3, 4] else 0, 'real': 0, 'imaginary': 1, 'alpha': depth-1} try: return kv[s.lower()] except KeyError: pass try: return int(s) except ValueError: return None if len(im.shape) < 3: im = im.reshape(im.shape[:2]+(1,)) depth = im.shape[2] channels = [] for s in channels_str.split(','): v = lookup_channel(s.lstrip(), depth) if v is not None: channels.append(v) complement = list(filter(lambda c: c not in channels, range(depth))) out1 = np.zeros(im.shape[:2]+(len(channels),)) out2 = np.zeros(im.shape[:2]+(len(complement),)) for pos, c in enumerate(channels): out1[:, :, pos] = im[:, :, c] for pos, c in enumerate(complement): out2[:, :, pos] = im[:, :, c] if len(channels) > 0: node_context.output['output1'].set_image(out1) if len(complement) > 0: node_context.output['output2'].set_image(out2)
[docs]class ConcatChannels(node.Node): """ Creates a new image with all the channels in the two input images. """ name = 'Merge Image Channels' author = 'Mathias Broxvall' version = '0.1' icon = 'image_merge_channels.svg' description = ('Creates a new image with all the channels in the two ' 'input images') nodeid = 'syip.concatchannels' tags = Tags(Tag.ImageProcessing.Layers) parameters = node.parameters() inputs = Ports([ ImagePort('Input image', name='input1'), ImagePort('Input image', name='input2')]) outputs = Ports([ ImagePort('Resulting image with all channels', name='output')]) def execute(self, node_context): im1 = node_context.input['input1'].get_image() im2 = node_context.input['input2'].get_image() if len(im1.shape) < 3: im1 = im1.reshape(im1.shape[:2] + (1,)) if len(im2.shape) < 3: im2 = im2.reshape(im2.shape[:2] + (1,)) shape = (max(im1.shape[0], im2.shape[0]), max(im1.shape[1], im2.shape[1]), im1.shape[2]+im2.shape[2]) out = np.zeros(shape) out[:im1.shape[0], :im1.shape[1], :im1.shape[2]] = im1 out[:im2.shape[0], :im2.shape[1], im1.shape[2]:] = im2 node_context.output['output'].set_image(out)