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I'm working on some computer vision algorithm and I'd like to show how a numpy array changes in each step.

What works now is that if I have a simple imshow( array ) at the end of my code, the window displays and shows the final image.

However what I'd like to do is to update and display the imshow window as the image changes in each iteration.

So for example I'd like to do:

import numpy as np
import matplotlib.pyplot as plt
import time

array = np.zeros( (100, 100), np.uint8 )

for i in xrange( 0, 100 ):
    for j in xrange( 0, 50 ):
        array[j, i] = 1

        plt.imshow( array )

The problem is that this way, the Matplotlib window doesn't get activated, only once the whole computation is finished.

I've tried both native matplotlib and pyplot, but the results are the same. For plotting commands I found an .ion() switch, but here it doesn't seem to work.

Q1. What is the best way to continuously display updates to a numpy array (actually a uint8 greyscale image)?

Q2. Is it possible to do this with an animation function, like in the dynamic image example? I'd like to call a function inside a loop, thus I don't know how to achieve this with an animation function.

share|improve this question
It may depend on which backend you use, but try calling at least one show() or draw() before starting your loop -- See this answer. –  Bonlenfum Jul 24 '13 at 13:29

1 Answer 1

up vote 9 down vote accepted

You don't need to call imshow all the time. It is much faster to use the object's set_data method:

myobj = imshow(first_image)
for pixel in pixels:

The draw() should make sure that the backend updates the image.

UPDATE: your question was significantly modified. In such cases it is better to ask another question. Here is a way to deal with your second question:

Matplotlib's animation only deals with one increasing dimension (time), so your double loop won't do. You need to convert your indices to a single index. Here is an example:

import numpy as np
from matplotlib import pyplot as plt
from matplotlib import animation

nx = 150
ny = 50

fig = plt.figure()
data = np.zeros((nx, ny))
im = plt.imshow(data, cmap='gist_gray_r', vmin=0, vmax=1)

def init():
    im.set_data(np.zeros((nx, ny)))

def animate(i):
    xi = i // ny
    yi = i % ny
    data[xi, yi] = 1
    return im

anim = animation.FuncAnimation(fig, animate, init_func=init, frames=nx * ny,
share|improve this answer
Unfortunately it doesn't work, the same thing happens. Maybe I should use the animation functions, like in the dynamic image example: but I don't know how can I transform that into a loop-based code. –  zsero Jul 24 '13 at 15:33
@zsero: if the simpler version doesn't work, I wonder if the more complex animations will work. I've just added an example that works for me (matplotlib 1.2), see if it works for you. –  tiago Jul 24 '13 at 15:53
Just tried to modify your example and I think im = imshow(data, ...) should read im = plt.imshow(data, ...). Also, in order to run the animation you need Cheers –  Chrigi Apr 7 '14 at 16:19
@Chrigi you are right. I usually have --pylab, so I didn't see the problem. Just updated the answer. –  tiago Apr 7 '14 at 16:46

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