def generate_config(filters=[TRANSLATE[key] for key in FILTERS]): #Set Outputs and inputs config = [ a3.Input('Source Image', a3.types.ImageFloat), a3.Input('Mask Image', a3.types.ImageFloat), a3.Output('Analyzed Image', a3.types.ImageFloat), a3.Output('Analyzed Binary', a3.types.ImageFloat), a3.Output('Analyzed Database', a3.types.GeneralPyType) ] #Set parameters for f in filters: for m in ['min', 'max']: config.append( a3.Parameter('{} {}'.format( f, m), a3.types.float).setFloatHint( 'default', 0 if m == 'min' else float(math.inf)).setFloatHint( 'unusedValue', 0 if m == 'min' else float(math.inf))) switch_list = [ a3.Parameter('Keep/Remove filtered objects', a3.types.bool).setBoolHint("default", False), a3.Parameter('Filter objects on border', a3.types.bool).setBoolHint("default", False), a3.Parameter('Volume in pixels/um\u00B3', a3.types.bool).setBoolHint("default", False) ] config.extend(switch_list) return config
def generate_config(): #Set Outputs and inputs config = [ a3.Input('ChA Image', a3.types.ImageFloat), a3.Input('ChB Image', a3.types.ImageFloat), a3.Input('ChA Thresholded', a3.types.GeneralPyType), a3.Input('ChB Thresholded', a3.types.GeneralPyType), a3.Output('ChA Image', a3.types.ImageFloat), a3.Output('ChB Image', a3.types.ImageFloat), a3.Output('ChA Thresholded', a3.types.ImageFloat), a3.Output('ChB Thresholded', a3.types.ImageFloat) ] return config
def generate_config(methods=METHODS): #Set Outputs and inputs config = [ a3.Input('File Path', a3.types.url), a3.Input('Output Path', a3.types.url), a3.Input('Input Image', a3.types.GeneralPyType), a3.Output('Thresholded Image', a3.types.GeneralPyType) ] #Set parameters param = a3.Parameter('Method', a3.types.enum) for idx, m in enumerate(methods): param.setIntHint(str(m), idx) config.append(param) config.append( a3.Parameter('Manual threshold value', a3.types.float).setFloatHint('default', float(math.inf))) #.setFloatHint('unusedValue', float(math.inf)) #.setFloatHint('stepSize', 1)) config.append(a3.Parameter('Slice/Stack histogram', a3.types.bool)) switch_list = [ a3.Parameter('Save Threshold(s)', a3.types.bool).setBoolHint("default", True), a3.Parameter('Save Image', a3.types.bool).setBoolHint("default", False) ] config.extend(switch_list) return config
def init_config(methods=METHODS): config = [a3.Input('Input Image', a3.types.ImageFloat)] method_param = a3.Parameter('Method', a3.types.enum) for idx, m in enumerate(methods): method_param.setIntHint(str(m), idx) config.append(method_param) #Add inputfield for BlockSize param_blocksize = a3.Parameter('BlockSize', a3.types.float) param_blocksize.setIntHint('min', 2) param_blocksize.setIntHint('max', 800) param_blocksize.setIntHint('stepSize', 1), config.append(param_blocksize) #Add inputfield for Offset param_offset = a3.Parameter('Offset', a3.types.float) param_offset.setIntHint('min', 0) param_offset.setIntHint('max', 800) param_offset.setIntHint('stepSize', 1), config.append(param_offset) config.append(a3.Output('Output Image', a3.types.ImageFloat)) return config
def generate_config(filters=FILTERS): #Set Outputs and inputs config = [ a3.Input('File Path', a3.types.url), a3.Input('Output Path', a3.types.url), a3.Input('ChA Image', a3.types.GeneralPyType), a3.Input('ChA DataBase', a3.types.GeneralPyType), a3.Input('ChB Image', a3.types.GeneralPyType), a3.Input('ChB DataBase', a3.types.GeneralPyType), a3.Output('Overlapping Image', a3.types.GeneralPyType), a3.Output('Overlapping Binary', a3.types.GeneralPyType), a3.Output('Overlapping DataBase', a3.types.GeneralPyType), a3.Output('Overlapping Path', a3.types.url) ] #Set parameters for f in filters: for m in ['min', 'max']: config.append( a3.Parameter('{} {}'.format( TRANSLATE[f], m), a3.types.float).setFloatHint( 'default', 0 if m == 'min' else DEFAULT_VALUE[f]).setFloatHint( 'default', 0 if m == 'min' else DEFAULT_VALUE[f]).setFloatHint( 'unusedValue', 0 if m == 'min' else DEFAULT_VALUE[f])) switch_list = [ a3.Parameter('Keep/Remove filtered objects', a3.types.bool).setBoolHint("default", False), a3.Parameter('Volume in pixels/um\u00B3', a3.types.bool).setBoolHint("default", False), a3.Parameter('Save to xlsx/text', a3.types.bool) ] config.extend(switch_list) return config
def generate_config(methods=METHODS): #Set Outputs and inputs config = [ a3.Input('Input Image', a3.types.ImageFloat), a3.Output('Image', a3.types.GeneralPyType), a3.Output('Thresholded Image', a3.types.GeneralPyType) ] #Set parameters param = a3.Parameter('Method', a3.types.enum) for idx, m in enumerate(methods): param.setIntHint(str(m), idx) config.append(param) config.append( a3.Parameter('Manual threshold value', a3.types.float).setFloatHint('default', float(math.inf))) #.setFloatHint('unusedValue', float(math.inf)) #.setFloatHint('stepSize', 1)) config.append(a3.Parameter('Slice/Stack histogram', a3.types.bool)) return config
def generate_config(methods=METHODS): config = [ a3.Input('Input Image', a3.types.ImageFloat), a3.Output('Output Image', a3.types.ImageFloat) ] param = a3.Parameter('Method', a3.types.enum) for idx, m in enumerate(methods): param.setIntHint(str(m), idx) config.append(param) config.append(a3.Parameter('Stack Histogram', a3.types.bool)) return config
def generate_config(): config = [ a3.Input('Input Image', a3.types.ImageFloat), a3.Output('Output Image', a3.types.ImageFloat) ] #Add inputfield for Upper threshold param_upper = a3.Parameter('Upper', a3.types.float) #param_upper.setIntHint('min', 0) #param_upper.setIntHint('max', 65535) param_upper.setIntHint('stepSize', 1), config.append(param_upper) #Add inputfield for Lower threshold param_lower = a3.Parameter('Lower', a3.types.float) #param_lower.setIntHint('min', 0) #param_lower.setIntHint('max', 65535) param_lower.setIntHint('stepSize', 1), config.append(param_lower) return config
#img.metadata['Path']=filename #Create Output #Extract channel from image array a3.outputs['Channel 1'] = img.get_dimension(a3.inputs['Channel'], 'C').to_multidimimage() #to_multidimimage(Image(array.astype(np.float),copy.deepcopy(img.metadata))) #Finalization tstop = time.clock() print('Processing finished in ' + str((tstop - tstart)) + ' seconds! ') print('Image loaded successfully!') print(SEPARATOR) except Exception as e: raise error("Error occured while executing '" + str(ctx.type()) + "' module '" + str(ctx.name()) + "' !", exception=e) config = [ a3.Parameter('Channel', a3.types.int8).setFloatHint('default', 0).setFloatHint('unusedValue', 0), a3.Input('Image', a3.types.GeneralPyType), a3.Input('MetaData', a3.types.GeneralPyType), a3.Output('Channel', a3.types.ImageFloat) ] a3.def_process_module(config, module_main)
a3.outputs['first selected channel'] = input_channels[sel_1] else: raise RuntimeError('invalid value for \'first selected channel\': {}' .format(sel_1)) if 0 <= sel_2 < 4: a3.outputs['second selected channel'] = input_channels[sel_2] else: raise RuntimeError('invalid value for \'second selected channel\': {}' .format(sel_1)) config = [a3.Input('channel 1', a3.types.ImageFloat), a3.Input('channel 2', a3.types.ImageFloat), a3.Input('channel 3', a3.types.ImageFloat), a3.Input('channel 4', a3.types.ImageFloat), a3.Parameter('first selected channel', a3.types.enum) .setIntHint("channel 1", 0) .setIntHint("channel 2", 1) .setIntHint("channel 3", 2) .setIntHint("channel 4", 3), a3.Parameter('second selected channel', a3.types.enum) .setIntHint("channel 1", 0) .setIntHint("channel 2", 1) .setIntHint("channel 3", 2) .setIntHint("channel 4", 3), a3.Output('first channel', a3.types.ImageFloat), a3.Output('second channel', a3.types.ImageFloat)] a3.def_process_module(config, module_main)
import a3dc_module_interface as a3 from modules.a3dc_modules.a3dc.utils import error import os def module_main(ctx): if os.path.isfile(a3.inputs['File'].path): a3.outputs['File'] = a3.inputs['File'] else: error( "Error occured while executing '" + str(ctx.type()) + "' module '" + str(ctx.name()) + "' !", OSError('Path is not a file!')) config = [ a3.Parameter('File', a3.types.url).setBoolHint('folder', False), a3.Output('File', a3.types.url) ] a3.def_process_module(config, module_main)
import a3dc_module_interface as a3 from scipy.ndimage.measurements import label import numpy as np def module_main(ctx): input_image = a3.MultiDimImageFloat_to_ndarray(a3.inputs['binary volume']) structure = np.array([ [[0,0,0],[0,1,0],[0,0,0]], [[0,1,0],[1,1,1],[0,1,0]], [[0,0,0],[0,1,0],[0,0,0]]]) labeled_image, _ = label(input_image, structure) print(labeled_image) a3.outputs['labeled volume'] = a3.MultiDimImageUInt32_from_ndarray(labeled_image) print('object labeling complete 🔖') config = [a3.Input('binary volume', a3.types.ImageFloat), a3.Output('labeled volume', a3.types.ImageUInt32)] a3.def_process_module(config, module_main)
#Load and reshape image img = VividImage.load(filename, file_type='ome') img.reorder('XYZCT') #Print important image parameters print_line_by_line(str(img)) #Create Output a3.outputs['Array'] = img.image a3.outputs['MetaData']=img.metadata #Add path and filename to metadata a3.outputs['MetaData']['Path']=os.path.dirname(filename) a3.outputs['MetaData']['FileName']=os.path.basename(filename) #Finalization tstop = time.clock() print('Processing finished in ' + str((tstop - tstart)) + ' seconds! ') print('Image loaded successfully!') print(SEPARATOR) except Exception as e: raise error("Error occured while executing '"+str(ctx.type())+"' module '"+str(ctx.name())+"' !",exception=e) config = [a3.Input('FileName', a3.types.url), a3.Output('Array', a3.types.GeneralPyType), a3.Output('MetaData', a3.types.GeneralPyType)] a3.def_process_module(config, module_main)
import numpy as np def module_main(ctx): w = a3.inputs['width'] h = a3.inputs['height'] d = a3.inputs['depth'] seed = a3.inputs['seed'] nlabels = a3.inputs['number of labels'] np.random.seed(seed) vol = np.random.randint(nlabels, size=(w, h, d)).astype(np.uint32) a3.outputs['labels'] = a3.MultiDimImageUInt32_from_ndarray(vol) print('your labeled volume is ready!🎲') config = [ a3.Parameter('width', a3.types.uint16).setIntHint('min', 1).setIntHint( 'max', 2048).setIntHint('default', 64), a3.Parameter('height', a3.types.uint16).setIntHint('min', 1).setIntHint( 'max', 2048).setIntHint('default', 64), a3.Parameter('depth', a3.types.uint16).setIntHint('min', 1).setIntHint( 'max', 2048).setIntHint('default', 16), a3.Parameter('seed', a3.types.uint16).setIntHint('default', 42), a3.Parameter('number of labels', a3.types.uint16).setIntHint('default', 5), a3.Output('labels', a3.types.ImageUInt32) ] a3.def_process_module(config, module_main)
import a3dc_module_interface as a3 def module_main(ctx): a3.outputs['Directory']=a3.inputs['Directory'] #if os.path.isdir(a3.inputs['Directory'].path): #a3.outputs['Directory']=a3.inputs['Directory'] #else: #error("Error occured while executing '"+str(ctx.type())+"' module '"+str(ctx.name())+"' !", OSError('Path is not a directory!')) config = [ a3.Parameter('Directory', a3.types.url).setBoolHint('folder', True), a3.Output('Directory', a3.types.url)] a3.def_process_module(config, module_main)
print(res) #Output a3.outputs['Raw Image'] = ch_1.to_multidimimage() a3.outputs['Thresholded Image'] = ch_1_thr.to_multidimimage() #Finalization tstop = time.clock() print('Processing finished in ' + str((tstop - tstart)) + ' seconds! ') print('Image loaded successfully!') print(SEPARATOR) except Exception as e: raise error("Error occured while executing '" + str(ctx.type()) + "' module '" + str(ctx.name()) + "' !", exception=e) config = [ a3.Input('FileName', a3.types.url), a3.Parameter('Channel A', a3.types.int8).setIntHint('default', 1) #.setIntHint('max', 8) .setIntHint('min', 1), #.setIntHint('unusedValue', 1), a3.Output('Raw Image', a3.types.ImageFloat), a3.Output('Thresholded Image', a3.types.ImageFloat) ] a3.def_process_module(config, module_main)
import numpy as np def module_main(ctx): w = a3.inputs['width'] h = a3.inputs['height'] d = a3.inputs['depth'] seed = a3.inputs['seed'] np.random.seed(seed) vol = np.random.rand(w, h, d) print('your volume is ready! 🍻') a3.outputs['volume'] = a3.MultiDimImageFloat_from_ndarray(vol) config = [ a3.Parameter('width', a3.types.uint16).setIntHint('min', 1) .setIntHint('max', 2048) .setIntHint('default', 64), a3.Parameter('height', a3.types.uint16).setIntHint('min', 1) .setIntHint('max', 2048) .setIntHint('default', 64), a3.Parameter('depth', a3.types.uint16).setIntHint('min', 1) .setIntHint('max', 2048) .setIntHint('default', 16), a3.Parameter('seed', a3.types.uint16).setIntHint('default', 42), a3.Output('volume', a3.types.ImageFloat)] a3.def_process_module(config, module_main)
if os.path.isfile(path): file_list.remove(path) file_list.insert(0, path) if len(file_list) == 0: raise Warning('path {} is empty'.format(base_dir)) index = ctx.run_id() if index < len(file_list) - 1: ctx.set_require_next_run(True) else: ctx.set_require_next_run(False) url = a3.Url() url.path = file_list[index] #Print current filename and index _, curr_filename = os.path.split(url.path) print('Currently processing:', curr_filename) #Set output a3.outputs['file'] = url print(SEPARATOR) config = [a3.Parameter('path', a3.types.url), a3.Output('file', a3.types.url)] def_process_module(config, module_main)
level = a3.inputs['level'] # TODO: this is a naive way, we should not copy the data with # MultiDimImageFloat_to_ndarray and MultiDimImageFloat_from_ndarray # but do the leveling in-place input_image = a3.MultiDimImageFloat_to_ndarray(a3.inputs['input']) if a3.inputs['input'].meta.has('type'): print('type', a3.inputs['input'].meta.get('type')) if a3.inputs['input'].meta.has('normalized'): print('normalized', a3.inputs['input'].meta.get('normalized')) if a3.inputs['input'].meta.has('path'): print('path', a3.inputs['input'].meta.get('path')) if a3.inputs['input'].meta.has('channel'): print('channel', a3.inputs['input'].meta.get('channel')) print(str(a3.inputs['input'].meta)) bin_image = (input_image >= level) * 1.0 a3.outputs['binary volume'] = a3.MultiDimImageFloat_from_ndarray(bin_image) print('binarization complete 🍰') config = [a3.Input('input', a3.types.ImageFloat), a3.Parameter('level', a3.types.float), a3.Output('binary volume', a3.types.ImageFloat)] a3.def_process_module(config, module_main)
a3.Parameter('wow', a3.types.int8), a3.Parameter('so filename', a3.types.url), a3.Parameter('wow integer', a3.types.int8).setIntHint('min', 2).setIntHint( 'unusedValue', 42).setIntHint('max', 64), a3.Parameter('much float', a3.types.float).setFloatHint('min', -0.5).setFloatHint( 'unusedValue', -0.2) # .setFloatHint('max', 1.72) .setFloatHint('stepSize', 0.1), a3.Parameter('very bool', a3.types.bool), a3.Parameter('so enum', a3.types.enum).setIntHint("option1", 0).setIntHint( "option2", 1).setIntHint("option3", 42), a3.Parameter('int16 in [-7, 9674]', a3.types.int16).setIntHint('min', -7).setIntHint('max', 9674), a3.Parameter('uint16 in [42, 72000]', a3.types.uint16).setIntHint('min', 42).setIntHint('max', 72000), a3.Parameter('uint32 in [42, 72000]', a3.types.uint32).setIntHint('min', 42).setIntHint('max', 72000), a3.Output('string output', a3.types.string), a3.Output('filename output', a3.types.url), a3.Output('int output', a3.types.int8), a3.Output('float output', a3.types.float), a3.Output('bool output', a3.types.bool), a3.Output('enum int output', a3.types.int32), a3.Output('pyobject output', a3.types.GeneralPyType) ] a3.def_process_module(config, module_main)
# -*- coding: utf-8 -*- """ Created on Fri Sep 14 09:02:31 2018 @author: pongor.csaba """ import a3dc_module_interface as a3 def module_main(ctx): a3.outputs['float output'] = a3.inputs['much float'] print('much float: {}'.format(a3.inputs['much float'])) config = [ a3.Parameter('much float', a3.types.float).setIntHint('min', -5).setIntHint( 'unusedValue', 1000), a3.Parameter('very bool', a3.types.bool).setBoolHint('s', False), # .setFloatHint('max', 1.72) #.setFloatHint('stepSize', 0.1), a3.Output('float output', a3.types.float) ] a3.def_process_module(config, module_main)
x, y, z = np.meshgrid(x_, y_, z_, indexing='ij') sp1 = np.maximum( 0, 32 - np.sqrt( np.square(x - c1[0]) + np.square(y - c1[1]) + np.square(z - c1[2]))) sp2 = np.maximum( 0, 32 - np.sqrt( np.square(x - c2[0]) + np.square(y - c2[1]) + np.square(z - c2[2]))) a3.outputs['sphere 1'] = a3.MultiDimImageFloat_from_ndarray(sp1) a3.outputs['sphere 2'] = a3.MultiDimImageFloat_from_ndarray(sp2) config = [ a3.Parameter('width', a3.types.uint16).setIntHint('min', 1).setIntHint( 'max', 2048).setIntHint('default', 64), a3.Parameter('height', a3.types.uint16).setIntHint('min', 1).setIntHint( 'max', 2048).setIntHint('default', 64), a3.Parameter('depth', a3.types.uint16).setIntHint('min', 1).setIntHint( 'max', 2048).setIntHint('default', 16), a3.Parameter('sphere 1 x', a3.types.uint16).setIntHint( 'min', 1).setIntHint('max', 2048).setIntHint('default', 24), a3.Parameter('sphere 2 y', a3.types.uint16).setIntHint( 'min', 1).setIntHint('max', 2048).setIntHint('default', 48), a3.Output('sphere 1', a3.types.ImageFloat), a3.Output('sphere 2', a3.types.ImageFloat) ] a3.def_process_module(config, module_main)
ch_2.reorder('ZYXCT') a3.outputs['Channel B'] = ch_2 #Finalization tstop = time.process_time() print('Processing finished in ' + str((tstop - tstart)) + ' seconds! ') print('Image loaded successfully!') print(SEPARATOR) except Exception as e: raise error("Error occured while executing '" + str(ctx.type()) + "' module '" + str(ctx.name()) + "' !", exception=e) config = [ a3.Input('FileName', a3.types.url), a3.Parameter('Channel A', a3.types.int8).setIntHint('default', 1) #.setIntHint('max', 8) .setIntHint('min', 1), #.setIntHint('unusedValue', 1), a3.Parameter('Channel B', a3.types.int8).setIntHint('default', 2) #.setIntHint('max', 8) .setIntHint('min', 1), #.setIntHint('unusedValue', 1), a3.Output('Channel A', a3.types.GeneralPyType), a3.Output('Channel B', a3.types.GeneralPyType) ] a3.def_process_module(config, module_main)
# unique labels for the intersections intersection_labels = intersection_mask * (labeled_2 * n_1 + labeled_1) ids_1 = labeled_1[intersection_mask].ravel() ids_int = intersection_labels[intersection_mask].ravel() ids_2 = labeled_2[intersection_mask].ravel() # intersecting label triplets intersecting_ids = np.unique(np.c_[ids_1, ids_int, ids_2], axis=0) return intersecting_ids, intersection_labels def module_main(ctx): input_A = a3.MultiDimImageUInt32_to_ndarray(a3.inputs['labeled A']) input_B = a3.MultiDimImageUInt32_to_ndarray(a3.inputs['labeled B']) intersecting_ids, intersection_labels = intersect_labels(input_A, input_B) a3.outputs['labeled intersection'] = \ a3.MultiDimImageUInt32_from_ndarray(intersection_labels.astype(np.uint32)) a3.outputs['label pair list'] = intersecting_ids print('labeled intersections are ready ✨') config = [ a3.Input('labeled A', a3.types.ImageUInt32), a3.Input('labeled B', a3.types.ImageUInt32), a3.Output('labeled intersection', a3.types.ImageUInt32), a3.Output('label pair list', a3.types.GeneralPyType) ] a3.def_process_module(config, module_main)
#Create Output 1 ch_1_Nb = a3.inputs['Channel'] - 1 ch_1 = img.get_dimension(ch_1_Nb, 'C') ch_1.metadata['Path'] = filename ch_1.reorder('ZYXCT') a3.outputs['Channel'] = ch_1 #Finalization tstop = time.clock() print('Processing finished in ' + str((tstop - tstart)) + ' seconds! ') print('Image loaded successfully!') print(SEPARATOR) except Exception as e: raise error("Error occured while executing '" + str(ctx.type()) + "' module '" + str(ctx.name()) + "' !", exception=e) config = [ a3.Input('FileName', a3.types.url), a3.Parameter('Channel', a3.types.int8).setIntHint('default', 1) #.setIntHint('max', 8) .setIntHint('min', 1), #.setIntHint('unusedValue', 1), a3.Output('Channel', a3.types.GeneralPyType) ] a3.def_process_module(config, module_main)
import a3dc_module_interface as a3 from modules.a3dc_modules.a3dc.utils import error import os def module_main(ctx): if os.path.exists(a3.inputs['Path'].path): a3.outputs['Path'] = a3.inputs['Path'] else: error("Error occured while executing '" + str(ctx.type()) + "' module '" + str(ctx.name()) + "'! Invalid path!!") config = [a3.Parameter('Path', a3.types.url), a3.Output('Path', a3.types.url)] a3.def_process_module(config, module_main)