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How can I use yaxis and xaxis, which I want and that are not correlated with data in the plot? For example, I want to plot the world map as an image using the code below:

import matplotlib.pyplot as plt

fig = plt.figure()

As a result, I got xaxis: 0...image_size_x from the left to the rigth and yaxis: 0...image_size_y from top to bottom. What do I need to to do to change its axis range into latitude and longitude formats? Thus the figure axis should contain degrees (from 90 to -90) on the both fields (x and y) regardless of what its real data plotted in the figure. Setting


will shift the image to the bottom by 90 pixels and reduced the y-dimension of the image into the scale of image_size_y/90. So it'll not work because xlim/ylim works with data, plotted in the figure.

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2 Answers 2

up vote 0 down vote accepted

Assuming (based on your post) the image is fine but the axis labels are off, try playing around with this, which will manually implement the axis labels:

ax = plt.subplot(111)
#... do your stuff
#need to figure out your image size divided by the number of labels you want
#FOR EXample, if image size was 180, and you wanted every second coordinate labeled:
ax.set_xticks([i for i in range(0,180,2)]) #python3 code to create 90 tick marks
ax.set_xticklabels([-i for i in range(-90,90,2)]) #python3 code to create 90 labels

The trick im using is to figure out how many labels you want (here, its 90: 180/2), add the tickmarks evenly in the range (0,imagesize), then manually do the labels. Here is a general formula:

ax.set_xticks([i for i in range(0,IMAGE_SIZE,_EVERY_XTH_COORD_LABELED)]) #python3 code to create 90 tick marks
ax.set_xticklabels([-i for i in range(-90,90,EVERY_XTH_COORD_LABELED)]) #python3 code to create 90 labels
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set_xticklabels is almost always a bad idea. It decouples your labels from your data. Better to use FuncFormatter. –  tcaswell Jul 6 '14 at 22:19

In short: Use the extent keyword with imshow.

In code:

import matplotlib.pyplot as plt

fig = plt.figure()
ax = fig.add_subaxis(111)
ax.imshow(world_map, extent=[-180,180,-90,90], aspect='auto')

If your map is then upside down, add the keyword argument origin='lower' to the imshow. That aspect='auto' is needed to make the map scalable in both dimensions independently. (The rest of the extra rows with add_subaxis are just to make the code more object-oriented, the real beef is in the keyword arguments.)

If imshow is not given the extents of the image, it thinks that you'll want to have each pixel centered at positions (0,0), (0,1), ..., (Nx-1, Ny-1), and then the image extents will start from (-.5, -.5).

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It works good. But the thing is I use a mercator projection map, where each 20 degrees of latitude (y dimension) has different its size in pixels. So I think the better way will be using something like Tommy said below. –  dizcza Jul 7 '14 at 9:10

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