# MemoryError during Fast Fourier Transform on an image using NumPy arrays under Windows

The code could compute Fourier transform from a `.tiff` image on my Ubuntu 11.04. On Windows XP it produces memory error. What to change? Thank you.

``````def fouriertransform(result):     #function for Fourier transform computation
for filename in glob.iglob ('*.tif')
arrayfourier = numpy.array([imgfourier])#make an array
# Take the fourier transform of the image.
F1 = fftpack.fft2(arrayfourier)
# Now shift so that low spatial frequencies are in the center.
F2 = fftpack.fftshift(F1)
# the 2D power spectrum is:
psd2D = np.abs(F2)**2
L = psd2D
np.set_printoptions(threshold=3)
#np.set_printoptions(precision = 3, threshold = None, edgeitems = None, linewidth = 3, suppress = True, nanstr = None, infstr = None, formatter = None)
for subarray in L:
for array in subarray:
for array in subarray:
for elem in array:
print '%3.10f\n' % elem
``````

The error output is:

``````Traceback (most recent call last):
File "C:\Documents and Settings\HrenMudak\Мои документы\Моя музыка\fourier.py", line 27, in <module>
F1 = fftpack.fft2(arrayfourier)
File "C:\Python27\lib\site-packages\scipy\fftpack\basic.py", line 571, in fft2
return fftn(x,shape,axes,overwrite_x)
File "C:\Python27\lib\site-packages\scipy\fftpack\basic.py", line 521, in fftn
return _raw_fftn_dispatch(x, shape, axes, overwrite_x, 1)
File "C:\Python27\lib\site-packages\scipy\fftpack\basic.py", line 535, in _raw_fftn_dispatch
return _raw_fftnd(tmp,shape,axes,direction,overwrite_x,work_function)
File "C:\Python27\lib\site-packages\scipy\fftpack\basic.py", line 463, in _raw_fftnd
x, copy_made = _fix_shape(x, s[i], waxes[i])
File "C:\Python27\lib\site-packages\scipy\fftpack\basic.py", line 134, in _fix_shape
z = zeros(s,x.dtype.char)
MemoryError
``````

I've tried to run your code, except that I replaced the `mahotas.imread` with the `scipy.misc.imread` function, because I don't have that library, and I could not reproduce your error.
• can you try to use the `scipy.misc.imread` function instead of the `mahotas` function? I suppose the issue could be there
• what are the dimensions of your image? Gray-scale / RGB? Printing all values for a large image could indeed take up quite some memory, so it might be better to visualize the results with e.g. matplotlibs `imshow` function.
• What are the dimensions of the image? i.e. try `print imgfourier.shape` also, you could try to use the `flatten=True` option in imread: `imgfourier = imread(filename, flatten=True) #read the image` Jun 23, 2013 at 12:02
• 90 MB tiff image seems rather large; could be that the `imread` function is not suited for handling such large images. What do you mean by that it's merged from 10 other images? Are you by any chance trying to read a 3d (medical) image volume? Could you also test your code on another tif image? Jun 24, 2013 at 11:53