I am trying to plot a 3D image of the seafloor from the data of a sonar run over a 500m by 40m portion of the seafloor. I am using matplotlib/mplot3d with Axes3D and I want to be able to change the aspect ratio of the axes so that the x & y axis are to scale. An example script with generated data rather than the real data is:
import matplotlib.pyplot as plt from matplotlib import cm from mpl_toolkits.mplot3d import Axes3D import numpy as np # Create figure. fig = plt.figure() ax = fig.gca(projection = '3d') # Generate example data. R, Y = np.meshgrid(np.arange(0, 500, 0.5), np.arange(0, 40, 0.5)) z = 0.1 * np.abs(np.sin(R/40) * np.sin(Y/6)) # Plot the data. surf = ax.plot_surface(R, Y, z, cmap=cm.jet, linewidth=0) fig.colorbar(surf) # Set viewpoint. ax.azim = -160 ax.elev = 30 # Label axes. ax.set_xlabel('Along track (m)') ax.set_ylabel('Range (m)') ax.set_zlabel('Height (m)') # Save image. fig.savefig('data.png')
And the output image from this script:
Now I would like to change it so that 1 metre in the along-track (x) axis is the same as 1 metre in the range (y) axis (or maybe a different ratio depending on the relative sizes involved). I would also like to set the ratio of the z-axis, again not neccessarily to 1:1 due to the relative sizes in the data, but so the axis is smaller than the current plot.
I have tried building and using this branch of matplotlib, following the example script in this message from the mailing list, but adding the
ax.pbaspect = [1.0, 1.0, 0.25] line to my script (having uninstalled the 'standard' version of matplotlib to ensure the custom version was being used) didn't make any difference in the generated image.
Edit: So the desired output would be something like the following (crudely edited with Inkscape) image. In this case I haven't set a 1:1 ratio on the x/y axes because that looks ridiculously thin, but I have spread it out so it isn't square as on the original output.