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Trying to write a simple lowpass filter in python to run against lena. Then I'd like to run an inverse filter to run against the lowpass and try to get the original back (well, as close to original). I'm new to programming in python and not quite sure where to start. I tried rearranging a highpass filter code but it doesn't look right.

import matplotlib.pyplot as plt
import numpy as np
import scipy.misc
from scipy import ndimage
import Image 

def plot(data, title):
    plot.i += 1
plot.i = 0

 # Load the data...
img = scipy.misc.lena()
data = np.array(img, dtype=float)
plot(data, 'Original')

#narrow lowpass filter
kernel = np.array([[1, 1, 1],
               [1,  -8, 1],
               [1, 1, 1]])
lp_3 = ndimage.convolve(data, kernel)
plot(lp_3, '3x3 Lowpass')

# A slightly "wider" lowpass filter 
kernel = np.array([[1, 1, 1, 1, 1],
               [1,  -1,  -2,  -1, 1],
               [1,  -2,  -4,  -2, 1],
               [1,  -1,  -2,  -1, 1],
               [1, 1, 1, 1, 1]])
lp_5 = ndimage.convolve(data, kernel)
plot(lp_5, '5x5 Lowpass')
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What is the problem? Where did it go wrong? Do you get any errors? If yes, what are they? –  Lawrence Apr 10 '14 at 14:26
When I ran it, it doesn't appear to look like a lowpass filter. not sure if it's actually correct. Also not sure how to create the inverse of the lowpass image I created. Also there are no errors while running this code, it works. –  user3433572 Apr 10 '14 at 14:34
In that case, this is not a python issue, rather then DSP issue. You should definitely ask this in dsp.stackexchange.com –  Lawrence Apr 10 '14 at 14:37
I didn't give you a negative vote, so I can't undo it, sorry. –  Lawrence Apr 10 '14 at 14:50

1 Answer 1

up vote 1 down vote accepted

You should definitely check your kernel first. It does not look like a lowpass (averaging) kernel at all. Try first something like

kernel = np.ones((n,n))

if you want to do a very simple lowpass filter n by n (i.e. blurring):

lowpass result

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