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scikit-image/doc/examples/plot_watershed.py
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emmanuelle a07fc6d172 New example for the gallery: watershed
Removed the See also part in watershed's docstrings, as it made the doc
compilation crash...
2011-10-06 23:15:27 +02:00

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Python

"""
======================
Watershed segmentation
======================
The watershed is a classical algorithm used for **segmentation**, that is, for
separating different objects in an image.
Starting from user-defined markers, the watershed algorithm treats pixels
values as a local topography (elevation). The algorithm floods basins from the
markers, until basins attributed to different markers meet on watershed lines.
In many cases, markers are chosen as local minima of the image, from which
basins are flooded.
In the example below, two overlapping circles are to be separated. To do so,
one computes an image that is the distance to the background. The maxima of
this distance (i.e., the minima of the opposite of the distance) are chosen as
markers, and the flooding of basins from such markers separates the two circles
along a watershed line.
See http://en.wikipedia.org/wiki/Watershed_(image_processing) for more details
on the algorithm.
"""
import numpy as np
from scipy import ndimage
import matplotlib.pyplot as plt
from scikits.image.morphology import watershed, is_local_maximum
# Generate an initial image with two overlapping circles
x, y = np.indices((80, 80))
x1, y1, x2, y2 = 28, 28, 44, 52
r1, r2 = 16, 20
mask_circle1 = (x - x1)**2 + (y - y1)**2 < r1**2
mask_circle2 = (x - x2)**2 + (y - y2)**2 < r2**2
image = np.logical_or(mask_circle1, mask_circle2)
# Now we want to separate the two objects in image
# Generate the markers as local maxima of the distance
# to the background
from scipy import ndimage
distance = ndimage.distance_transform_edt(image)
local_maxi = is_local_maximum(distance, image, np.ones((3, 3)))
markers = ndimage.label(local_maxi)[0]
labels = watershed(-distance, markers, mask=image)
plt.figure(figsize=(9, 3))
plt.subplot(131)
plt.imshow(image, cmap=plt.cm.gray, interpolation='nearest')
plt.axis('off')
plt.subplot(132)
plt.imshow(-distance, cmap=plt.cm.jet, interpolation='nearest')
plt.axis('off')
plt.subplot(133)
plt.imshow(labels, cmap=plt.cm.spectral, interpolation='nearest')
plt.axis('off')
plt.subplots_adjust(hspace=0.01, wspace=0.01, top=1, bottom=0, left=0,
right=1)
plt.show()