# 2D slice series of 3D array in numpy

I have a 3D array that represents density values over cartesian space. To get a 2D image I just sum over one of the axes using `sum(array,2)` and then use the matplotlib function `imshow(array2D)` to obtain the 2D image.

What I want to do is use `imshow()` to display only one slice of the 3D array at a time so that I can 'page' through the 3D array to see different points of the image.

The slice command is simple: `array[:,:,x]` but I see no way to display every slice one at a time at least. Does anyone have suggestions other than manually changing the program file each time? Can this be done interactively somehow?

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I actually wrote code to do exactly what I think you are looking for, see if this helps:

``````import numpy as np
import pylab

class plotter:
def __init__(self, im, i=0):
self.im = im
self.i = i
self.vmin = im.min()
self.vmax = im.max()
self.fig = pylab.figure()
pylab.gray()
self.draw()
self.fig.canvas.mpl_connect('key_press_event',self)

def draw(self):
if self.im.ndim is 2:
im = self.im
if self.im.ndim is 3:
im = self.im[...,self.i]
self.ax.set_title('image {0}'.format(self.i))

pylab.show()

self.ax.imshow(im, vmin=self.vmin, vmax=self.vmax, interpolation=None)

def __call__(self, event):
old_i = self.i
if event.key=='right':
self.i = min(self.im.shape[2]-1, self.i+1)
elif event.key == 'left':
self.i = max(0, self.i-1)
if old_i != self.i:
self.draw()
self.fig.canvas.draw()

def slice_show(im, i=0):
plotter(im, i)
``````

Just call the show function on your 3d array, i will tell it what slice to displaying. You can step through slices with arrow keys as long as you have the plot selected.

Note, this expects arrays with shape (x, y, z), you could for example get such an array from a series of 2d arrays with np.dstack((im1, im2, ...)).

See also Interactive matplotlib plot with two sliders for a code example of doing it with gui sliders

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Thanks for this, I was looking for something like this too. Just fyi, every time you call `imshow` it stacks another image onto a pile of images, you might want to do something like `self.ax.images.pop()` before you do the `imshow` in order to avoid a memory leak. –  Bi Rico Mar 7 '12 at 17:18
hey cool, I have suspected a memory leak, I will give ax.images.pop() a try –  triplepoint217 Feb 20 '13 at 18:11