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I am using python to create a gaussian filter of size 5x5. I saw this post here where they talk about a similar thing but I didn't find the exact way to get equivalent python code to matlab function fspecial('gaussian', f_wid, sigma) Is there any other way to do it? I tried using the following code :

size = 2
sizey = None
size = int(size)
if not sizey:
    sizey = size
else:
    sizey = int(sizey)
x, y = scipy.mgrid[-size: size + 1, -sizey: sizey + 1]
g = scipy.exp(- (x ** 2/float(size) + y ** 2 / float(sizey)))
print g / np.sqrt(2 * np.pi)

The output obtained is

[[ 0.00730688  0.03274718  0.05399097  0.03274718  0.00730688]
 [ 0.03274718  0.14676266  0.24197072  0.14676266  0.03274718]
 [ 0.05399097  0.24197072  0.39894228  0.24197072  0.05399097]
 [ 0.03274718  0.14676266  0.24197072  0.14676266  0.03274718]
 [ 0.00730688  0.03274718  0.05399097  0.03274718  0.00730688]]

What I want is something like this:

   0.0029690   0.0133062   0.0219382   0.0133062   0.0029690
   0.0133062   0.0596343   0.0983203   0.0596343   0.0133062
   0.0219382   0.0983203   0.1621028   0.0983203   0.0219382
   0.0133062   0.0596343   0.0983203   0.0596343   0.0133062
   0.0029690   0.0133062   0.0219382   0.0133062   0.0029690
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I am using the code mentioned in the blog. I set N = 2 and sigma = 1 and use the following code : size = 2 sizey = None size = int(size) if not sizey: sizey = size else: sizey = int(sizey) x, y = scipy.mgrid[-size: size + 1, -sizey: sizey + 1] g = scipy.exp( - (x ** 2/float(size) + y ** 2 / float(sizey)) / 2) print g / np.sqrt(2 * np.pi) But the result obtained here is different form the one obtained using fspecial in matlab –  Khushboo Jun 19 '13 at 12:30
    
How is it different? What do you expect and what do you get? –  interjay Jun 19 '13 at 12:47
    
I have included it in the question. Please check it again. –  Khushboo Jun 19 '13 at 12:53

3 Answers 3

up vote 6 down vote accepted

In general terms if you really care about getting the the exact same result as MATLAB, the easiest way to achieve this is often by looking directly at the source of the MATLAB function.

In this case, edit fspecial:

...
  case 'gaussian' % Gaussian filter

     siz   = (p2-1)/2;
     std   = p3;

     [x,y] = meshgrid(-siz(2):siz(2),-siz(1):siz(1));
     arg   = -(x.*x + y.*y)/(2*std*std);

     h     = exp(arg);
     h(h<eps*max(h(:))) = 0;

     sumh = sum(h(:));
     if sumh ~= 0,
       h  = h/sumh;
     end;
...

Pretty simple, eh? It's <10mins work to port this to Python:

import numpy as np

def matlab_style_gauss2D(shape=(3,3),sigma=0.5):
    """
    2D gaussian mask - should give the same result as MATLAB's
    fspecial('gaussian',[shape],[sigma])
    """
    m,n = [(ss-1.)/2. for ss in shape]
    y,x = np.ogrid[-m:m+1,-n:n+1]
    h = np.exp( -(x*x + y*y) / (2.*sigma*sigma) )
    h[ h < np.finfo(h.dtype).eps*h.max() ] = 0
    sumh = h.sum()
    if sumh != 0:
        h /= sumh
    return h

This gives me the same answer as fspecial to within rounding error:

 >> fspecial('gaussian',5,1)

 0.002969     0.013306     0.021938     0.013306     0.002969
 0.013306     0.059634      0.09832     0.059634     0.013306
 0.021938      0.09832       0.1621      0.09832     0.021938
 0.013306     0.059634      0.09832     0.059634     0.013306
 0.002969     0.013306     0.021938     0.013306     0.002969

 : matlab_style_gauss2D((5,5),1)

array([[ 0.002969,  0.013306,  0.021938,  0.013306,  0.002969],
       [ 0.013306,  0.059634,  0.09832 ,  0.059634,  0.013306],
       [ 0.021938,  0.09832 ,  0.162103,  0.09832 ,  0.021938],
       [ 0.013306,  0.059634,  0.09832 ,  0.059634,  0.013306],
       [ 0.002969,  0.013306,  0.021938,  0.013306,  0.002969]])
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Thats exactly what I was looking for. And you really made it simple. Thanks :) –  Khushboo Jun 20 '13 at 7:32

This function implements functionality similar to fspecial in matlab

http://docs.scipy.org/doc/scipy/reference/generated/scipy.signal.get_window.html from scipy import signal

>>>signal.get_window(('gaussian',2),3)
>>>array([ 0.8824969,  1.       ,  0.8824969])

This function appears to generate only 1D kernels

I guess you could implement code to generate a Gaussian mask yourself as well as other have pointed out.

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I found similar solution for this problem:

def fspecial_gauss(size, sigma):

    """Function to mimic the 'fspecial' gaussian MATLAB function
    """

    x, y = numpy.mgrid[-size//2 + 1:size//2 + 1, -size//2 + 1:size//2 + 1]
    g = numpy.exp(-((x**2 + y**2)/(2.0*sigma**2)))
    return g/g.sum()
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