# calling contour without plotting it, python, pylab inline

For an algorithm I am using contour, but I'm only interested in its collection of paths. Since I have called

``````pylab inline
``````

from the start, and it is now too painful to rewrite the code without the inline (many functions have to be declared more carefully, like np.something() instead of something(), etc...), I was wondering if there is a way to call contour without it plotting the contour map ? Something like

``````contour(image_matrix, 'No Show')?
``````

Regards

The following is a modified code i used to get the points on a unit circle within in a declared meshgrid. It gives the contour points faster than plt.contour and doesn't plot the points.

The matplotlib._cntr is the core function called by plt.contour which tries to get the contour points.

``````import matplotlib._cntr as cntr
import numpy as np

# Test data.
x = np.linspace(-1, 1, 20)
y = np.linspace(-1, 1, 20)

x, y = np.meshgrid(x, y)
z = x**2 + y**2 - 1            # Function to get points from
# the above function can be replaced with any curve equation
# conics like ellipse or hyperbola: ((x**2)/a)+((y**2)/b)-1,etc.

level = 0
c = cntr.Cntr(x, y, z)
nlist = c.trace(level, level, 0)
segs = nlist[:len(nlist)//2]
print segs[0][0]    # x,y coords of contour points.
``````

Sorry for the poor explaination, I am not experienced enough with python. For a detailed explanation so you can refer to the link below.

At the end of discussion Mr.Ian Thomas has attached a code 'contour_test.py' which may be of help to you.

link to sample code: http://matplotlib.1069221.n5.nabble.com/attachment/15872/0/contour_test.py

There is not specific option to suppress plotting of a contour (as far as I can see). The following question appears to provide exactly what you want using `matplotlib._cntr`.

For your case, it may be simpler to achieve the suppression of a figure in pylab inline by switching back to a different gui, e.g. using `%pylab qt` and then call `cs = contour(image_matrix)`. This may not show anything without an explicit call to `plt.show()` and you can use `cs` to get the contour information you need.

You may also be able to use something like `matplotlib.interactive(False)` to suppress the figure.

Because `matplotlib._cntr` is not supported anymore, you can use the `find_contour()` function from `skimage`. Here is a simple code to extract a contour level 0.8 from an analytical function from the documentation.

``````import numpy as np
from skimage import measure

# Construct some test data
x, y = np.ogrid[-np.pi:np.pi:100j, -np.pi:np.pi:100j]
r = np.sin(np.exp((np.sin(x)**3 + np.cos(y)**2)))

# Find contours at a constant value of 0.8
contours = measure.find_contours(r, 0.8)
``````

This will give you the contour in function of (row, column) coordinates along the contour, and not the value of `x` and `y`. To convert to `x` and `y` values, you can then interpolate using `interp1d` from `scipy`:

``````from scipy.interpolate import interp1d
fx = interp1d(np.arange(0,x.shape[0]), x.flatten())
fy = interp1d(np.arange(0,y.shape[1]), y.flatten())
for contour in contours:
contour[:,0] = fx(contour[:,0])
contour[:,1] = fy(contour[:,1])
``````

Simple code to see the results and validate:

``````import matplotlib.pyplot as plt
fig = plt.figure()
for contour in contours:
ax.plot(contour[:,0], contour[:,1])
fig.show()
``````

Figure of the extracted contours

• This becomes ridiculously difficult and computation-heavy if you try to do this in irregular (inseparable) grid. Is there any way to apply `find_contour` without having to deal with transformations via interpolation? Also, it seems that `find_contour` and `matplotlib contour` result in slightly different ones, and in my cases `matplotlib contour` seems far robust. It is such a frustration that `matplotlib` discontinued `cntr` functionality... Commented Jan 6, 2021 at 13:30
• Do you have an example? Commented Jan 7, 2021 at 16:35
• You can also take a look at the legacy contour repo. Commented Jan 7, 2021 at 16:44
• Another option might be to define a "throwaway" figure, use `contour` on that and then define another figure on which the actual plot for displaying is defined. Commented Jan 17, 2022 at 11:08

There is a better way now. They have split off the underlying code into a new package called `contourpy`. In my case, the required code was simply:

``````from contourpy import contour_generator
cg = contour_generator(X, Y, Z)
contours = cg.lines(0.98*Z.min())
``````

which gives me a polygon at 98% of the minimum of a Z matrix.