First off, I think you're getting a bit confused between the axes (basically, the plot), the figure, the scalar mappable (the image, in this case), and the colorbar instance.
figure is the window that the plot is in. It's the top-level container.
Each figure usually has one or more
axes. These are the plots/subplots.
Colorbars are also inside the figure. Adding a colorbar creates a new axes (unless you specify otherwise) for the colorbar to be displayed in. (It can't normally be displayed in the same axes as the image, because the colorbar needs to have its own x and y limits, etc.)
Some of your confusion is due to the fact that you're mixing the state-machine interface and the OO interface. It's fine to do this, but you need to understand the OO interface.
fig.axes isn't the colorbar instance. It's the axes that the colorbar is plotted in. (Also,
fig.axes is just the second axes in the figure. It happens to be the axes that the colorbar is in for a figure with one subplot and one colorbar, but that won't generally be the case.)
If you want to update the colorbar, you'll need to hold on to the colorbar instance that
Here's an example of how you'd normally approach things:
import matplotlib.pyplot as plt
import numpy as np
data = np.random.random((10,10)) # Generate some random data to plot
fig, ax = plt.subplots() # Create a figure with a single axes.
im = ax.imshow(data) # Display the image data
cbar = fig.colorbar(im) # Add a colorbar to the figure based on the image
If you're going to use
update_normal to update the colorbar, it expects a
ScalarMappable (e.g. an image created by
imshow, the collection that
scatter creates, the
contour creates, etc) to be passed in. (There are other ways to do it, as well. Often you just want to update the limits, rather than the whole thing.) In the case of the code above, you'd call
However, you haven't created a new
AxesImage, you've just changed it's data. Therefore, you probably just want to do: