一、 代码
- 创建一个图
from pygraph.classes.digraph import digraph
from pygraph.algorithms.minmax import maximum_flow
gr = digraph()#创建一个图,有向带权图
gr.add_nodes([0,1,2,3])
gr.add_edge((0,1), wt=4)#wt权重
gr.add_edge((1,2), wt=3)
gr.add_edge((2,3), wt=5)
gr.add_edge((0,2), wt=3)
gr.add_edge((1,3), wt=4)
flows,cuts = maximum_flow(gr, 0, 3)
print ('flow is:' , flows)
print ('cut is:' , cuts)
- 分割图片前景背景
from scipy.misc import imresize
from PCV.tools import graphcut
from PIL import Image
from numpy import *
from pylab import *
im = array(Image.open("empire.jpg"))
im = imresize(im, 0.07)
size = im.shape[:2]
print ("OK!!")
# add two rectangular training regions
labels = zeros(size)
labels[3:18, 3:18] = -1 #背景
labels[-18:-3, -18:-3] = 1 #前景
print ("OK!!")
# create graph
g = graphcut.build_bayes_graph(im, labels, kappa=1)
# cut the graph
res = graphcut.cut_graph(g, size)
print ("OK!!")
figure()
graphcut.show_labeling(im, labels)
figure()
imshow(res)
gray()
axis('off')
show()
二、结果
- 图片各个结点以及他们的权重+分割的路径
- 分割下图的前景和背景
蓝框背景,红框前景
分割结果