Skip to content

AlainKadar/sknwEdits

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

25 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Skeleton Network

build net work from nd skeleton image

graph = sknw.build_sknw(ske, multi=False)

ske: should be a nd skeleton image

multi: 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

graph detail:

graph.node[id]['pts'] : Numpy(x, n), coordinates of nodes points

graph.node[id]['o']: Numpy(n), centried of the node

graph.edge(id1, id2)['pts']: Numpy(x, n), sequence of the edge point

graph.edge(id1, id2)['weight']: float, length of this edge

if it's a multigraph, you must add a index after two node id to get the edge, like: graph.edge(id1, id2)[0].

Build Graph:

build Graph by Skeleton, then plot as a vector Graph in matplotlib.

from skimage.morphology import skeletonize
from skimage import data
import sknw

# open and skeletonize
img = data.horse()
ske = skeletonize(~img).astype(np.uint16)

# build graph from skeleton
graph = sknw.build_sknw(ske)

# draw image
plt.imshow(img, cmap='gray')

# draw edges by pts
for (s,e) in graph.edges():
    ps = graph[s][e]['pts']
    plt.plot(ps[:,1], ps[:,0], 'green')
    
# draw node by o
nodes = graph.nodes()
ps = np.array([nodes[i]['o'] for i in nodes])
plt.plot(ps[:,1], ps[:,0], 'r.')

# title and show
plt.title('Build Graph')
plt.show()

Find Path

then you can use networkx do what you want

3D Skeleton

sknw can works on nd image, this is a 3d demo by mayavi

About ImagePy

https://github.com/Image-Py/imagepy

ImagePy is my opensource image processihng framework. It is the ImageJ of Python, you can wrap any numpy based function esaily. And sknw is a sub module of ImagePy. You can use sknw without any code.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages