Please see sknw's document on github's read me. the default multi = Falseand if it's a multigraph, you must add a index after two node id to get the edge, like: graph.edge(id1, id2)[0]graph = sknw.build_sknw(ske, multi=False)ske: should be a nd skeleton imagemulti: if True,a multigraph is retured, which allows more than one edge between two nodes and self-self edge. default is False.return: is a networkx Graph object----- 原始邮件 ----- 发件人:Deepa <deepamahm.iisc@gmail.com> 收件人:imagepy@sina.com, scikit-image@python.org 主题:Re: [scikit-image] 回复:Re: Converting an image to a skeleton 日期:2018年11月30日 17点36分 I checked the sknw package .I'm using the input matrix data of the skeleton image that is created using Mathematica.Here is my code that is written to highlight all the nodes and edges from skimage.morphology import skeletonizefrom skimage import dataimport sknwimport numpy as npimport matplotlib.pyplot as pltimport scipy.io as spioimport networkx as nxfrom networkx.drawing.nx_pydot import write_dotmat = spio.loadmat('file.mat', squeeze_me=True)print(type(mat))print(type(mat.get('Expression1')))print(mat.get('Expression1'))img1 = mat.get('Expression1')print(img1)ske = skeletonize(img1).astype(np.uint16)# build graph from skeletongraph = sknw.build_sknw(ske) # draw imageplt.imshow(img1, cmap='gray') # draw edges by ptsfor (s,e) in graph.edges(): ps = graph[s][e]['pts'] plt.plot(ps[:,1], ps[:,0], 'green') # draw node by onode, nodes = graph.node, graph.nodes()ps = np.array([node[i]['o'] for i in nodes])plt.plot(ps[:,1], ps[:,0], 'r.')#pos = nx.nx_agraph.graphviz_layout(graph)#print(pos)#plt.findpath(img1)# title and showplt.title('Build Graph')plt.show() Please find the input file.mat file here. Even with sknw package I face the same problem when there are multiple edges.Please the output image attached. Some edges are not highlighted in green. Could you please suggest how this can be improved? On Thu, Nov 29, 2018 at 7:33 PM <imagepy@sina.com> wrote: please see my mail earlier,skan and sknw on github. ----- 原始邮件 ----- 发件人: Leena Chourey<leenagour@gmail.com> 收件人: Mailing list for scikit-image (http://scikit-image.org)<scikit-image@python.org> 主题: [scikit-image] Re: Converting an image to a skeleton 日期: 2018-11-29 19:40 I need solution for same. Pls share. On Thu, 29 Nov 2018, 16:37 Deepa, <deepamahm.iisc@gmail.com> wrote: I would like to generate a skeleton out of an image. The resulting output of the skeleton image has disconnected edges. import skimage from skimage import data,io,filters import numpy as np import cv2 import matplotlib.pyplot as plt from skimage.filters import threshold_adaptive,threshold_mean from skimage.morphology import binary_dilation from skimage import feature from skimage.morphology import skeletonize_3d imgfile = "Bagah.jpeg" im = cv2.imread(imgfile) image = cv2.cvtColor(im, cv2.COLOR_BGR2GRAY) thresh = threshold_mean(image) thresh = threshold_mean(thresh) binary = image > thresh #dilate = skimage.morphology.binary_dilation(binary) gaussian = skimage.filters.gaussian(binary) edges = filters.sobel(gaussian) #dilate = feature.canny(edges)#binary,sigma=0) skeleton = skeletonize_3d(gaussian)#binary) fig, axes = plt.subplots(nrows=2,ncols=2, figsize=(8, 2)) ax = axes.ravel() ax[0].imshow(gaussian, cmap=plt.cm.gray) ax[0].set_title('gaussian') ax[1].imshow(skeleton, cmap=plt.cm.gray) ax[1].set_title('skeleton') for a in ax: a.axis('off') plt.show() Please find the attachments of my input and output files. I would like to translate this skeleton into a graph with nodes and edges. Could someone suggest how to obtain a skeleton with connected edges? I’m protected online with Avast Free Antivirus. Get it here — it’s free forever. _______________________________________________ scikit-image mailing list -- scikit-image@python.org To unsubscribe send an email to scikit-image-leave@python.org _______________________________________________ scikit-image mailing list -- scikit-image@python.org To unsubscribe send an email to scikit-image-leave@python.org 来自新浪邮箱触屏版_______________________________________________ scikit-image mailing list -- scikit-image@python.org To unsubscribe send an email to scikit-image-leave@python.org