I have a situation where I am producing upwards of 20 different images using matplotlib. This is done many many times. Each of the 20 images has the same set of contours in the background. In order to reduce the processing time, it would be useful to be able to copy the result of
countourf() from one
Axes instance to another. In order to do this, I have tried this:
#!/bin/env python import os import numpy as np from matplotlib import pyplot as plt def copycontours(): #Create figures fig1 = plt.figure() fig2 = plt.figure() fig3 = plt.figure() #Create axes ax1 = fig1.add_axes((0.05,0.05,0.90,0.90)) ax2 = fig2.add_axes((0.05,0.05,0.90,0.90)) ax3 = fig3.add_axes((0.05,0.05,0.90,0.90)) #Create random data data = np.random.normal(25, size=(25,25)) #Add contours to first axes instance and save image contours = ax1.contourf(data) fig1.savefig('test.png') #Add contours to second axes instance from first axes instance for collection in ax1.collections: ax2.add_collection(collection) fig2.savefig('test2.png') #Add contours to third axes instance from for collection in contours.collections: ax3.add_collection(collection) fig3.savefig('test3.png') os.system('display test.png &') os.system('display test2.png &') os.system('display test3.png &') if __name__ == '__main__': copycontours()
The first figure (test.png) comes out looking correct. The axes range from 0 to 25 and the full domain is filled.
The other two (test2.png, test3.png) come out differently. Their axes range from 0 to 1 and the contour region only fills the area from 0.0 to approximately 7.9.
Resetting the axis limits via
ax2.set_xlim(0,25) changes the axis ranges, but does not fix the larger problem.
Does anyone have a thought on how to fix this problem or another method for reusing the results of
contourf() in a different way?