As part of a digital image processing class, we have been assigned the Inverse Filter for image restoration. I'm using numpy. The variable names below try to follow the names in *Digital Image Processing* Gonzalez+Woods, 3e.

A zoom of the original image. .

Gaussian kernel "zz.tif" same size as original image.

Zoom of the gaussian smoothed image with no noise added

```
f = imtools.load_image( sys.argv[1], mode="L", dtype="float" )
zz = imtools.load_image( "zz.tif", mode="L", dtype="float" )
F = np.fft.fft2( f )
F2 = np.fft.fftshift( F )
# normalize to [0,1]
H = zz/255.
# calculate the damaged image
G = H * F2
# Inverse Filter
F_hat = G / H
# cheat? replace division by zero (NaN) with zeroes
a = np.nan_to_num(F_hat)
f_hat = np.fft.ifft2( np.fft.ifftshift(a) )
imtools.save_image( np.abs(f_hat), "out.tif" )
```

imtools is just my wrapper using PIL+numpy to load/store images. (Can post that src, too.)

Zoom of the inverse filtered image.

Am I calculating the Inverse Filter correctly? Am I using numpy correctly?

Is the ringing in the final image expected or am I doing something wrong?