コード例 #1
0
def closest_objects(labeled,n_cpu=1):
	from ops.process import feature_table
	from scipy.spatial import cKDTree

	features = {
	'i'       : lambda r: r.centroid[0],
    'j'       : lambda r: r.centroid[1],
    'label'   : lambda r: r.label
    }
	
	df = feature_table(labeled,labeled,features)

	kdt = cKDTree(df[['i','j']])

	distances,indexes = kdt.query(df[['i','j']],3,n_jobs=n_cpu)

	df['first_neighbor'],df['first_neighbor_distance'] = indexes[:,1],distances[:,1]
	df['second_neighbor'],df['second_neighbor_distance'] = indexes[:,2],distances[:,2]

	first_neighbors = df[['i','j']].values[df['first_neighbor'].values]
	second_neighbors = df[['i','j']].values[df['second_neighbor'].values]

	angles = [angle(v,p0,p1) 
          for v,p0,p1 
          in zip(df[['i','j']].values,first_neighbors,second_neighbors)]

	df['angle_between_neighbors'] = np.array(angles)*(180/np.pi)

	return df.drop(columns=['i','j']).set_index('label')
コード例 #2
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    def _extract_features(data, labels, wildcards, features=None):
        """Extracts features in dictionary and combines with generic region
        features.
        """
        from ops.process import feature_table
        from ops.features import features_basic
        features = features.copy() if features else dict()
        features.update(features_basic)

        df = feature_table(data, labels, features)

        for k, v in sorted(wildcards.items()):
            df[k] = v

        return df
コード例 #3
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    def _extract_features_bare(data, labels, features=None, wildcards=None,**kwargs):
        """Extracts features in dictionary and combines with generic region
        features.
        """
        from ops.process import feature_table
        features = features.copy() if features else dict()
        features.update({'label': lambda r: r.label})

        df = feature_table(data, labels, features)

        if wildcards is not None:
            for k,v in sorted(wildcards.items()):
                df[k] = v

        return df
コード例 #4
0
				  				   	   filetypes=(("image files","*.tif"),
				  				   	   			  ("all files","*.*")
				  				   	   			 )
				  				  	  )
				 	 )

		root_2.destroy()
		_,ext_2= splitext(filename_2)

		if ext_2 not in image_ext:
			raise Exception('intensity image file must be .tif or .tiff')
		else:
			img_file = filename_2
			img_labels = read(label_file)

			df = (feature_table(img_labels, img_labels, features_basic)
        		  .assign(label_file=label_file,img_file=img_file)
        		 )

	else:
		table_file = filename_1
		raise Exception('input table file must be .csv or .hdf')

elif len(sys.argv) == 2:
	filename_1 = sys.argv[1]
	_,ext_1= splitext(filename_1)
	if ext_1 not in table_ext:
		raise Exception('input table file must be .csv or .hdf')
	else:
		table_file = filename_1
		df = pd.read_hdf(table_file)
elif len(sys.argv) > 2: