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i have this image with two people in it. it is binary image only contains black and white pixels.

first i want to loop over all the pixels and find white pixels in the image.

than what i want to do is that i want to find [x,y] for the one certain white pixel.

after that i want to use that particular[x,y] in the image which is for the white pixel in the image.

using that co-ordinate of [x,y] i want to convert neighbouring black pixels into white pixels. not whole image tho.

i wanted to post image here but i cant post it unfortunately. i hope my question is understandable now. in the below image you can see the edges.

say for example the edge of the nose i find that with loop using [x,y] and than turn all neighbouring black pixels into white pixels.

This is the binary image

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Rewrite the whole question, it is not understandable. –  mmgp Feb 22 '13 at 14:52
i have edited my question now. @mmgp –  user2096230 Feb 22 '13 at 16:36
Include links to the images you want to show. –  mmgp Feb 22 '13 at 16:40
Try writing a mock piece of code so we can better understand what you are after. –  8765674 Feb 22 '13 at 16:40
i included the link to image now. @mmgp –  user2096230 Feb 22 '13 at 16:54

1 Answer 1

The operation described is called dilation, from Mathematical Morphology. You can either use, for example, scipy.ndimage.binary_dilation or implement your own.

Here are the two forms to do it (one is a trivial implementation), and you can check the resulting images are identical:

import sys
import numpy
from PIL import Image
from scipy import ndimage

img = Image.open(sys.argv[1]).convert('L') # Input is supposed to the binary.
width, height = img.size
img = img.point(lambda x: 255 if x > 40 else 0) # "Ignore" the JPEG artifacts.

# Dilation
im = numpy.array(img)
im = ndimage.binary_dilation(im, structure=((0, 1, 0), (1, 1, 1), (0, 1, 0)))
im = im.view(numpy.uint8) * 255

# "Other operation"
im = numpy.array(img)
white_pixels = numpy.dstack(numpy.nonzero(im != 0))[0]
for y, x in white_pixels:
    for dy, dx in ((-1,0),(0,-1),(0,1),(1,0)):
        py, px = dy + y, dx + x
        if py >= 0 and px >= 0 and py < height and px < width:
            im[py, px] = 255
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+1 for your psychic powers in figuring out what the OP was after! –  Jaime Feb 22 '13 at 17:28
one question if image is in binary why is there line that converts image into grayscale ? sorry if that is dumb question but i was confused about it ? –  user2096230 Feb 22 '13 at 17:37
It is your image, not mine. You saved it using JPEG, which will very likely create these kind of artifacts. Save it in a lossless format (JPEG2000 doesn't count). –  mmgp Feb 22 '13 at 17:47
yeh i changed the format to png. the code you gave is thickening the edges for whole image. i just want to do for the middle part of the face not the whole pic. i tried playing around with code but i cant figure out :( @mmgp –  user2096230 Feb 22 '13 at 18:15
In the loop for y, x in white_pixels you need some other information to determine whether to dilate the point or not. The process is the same, but you have to somehow define where is the middle part of the face. –  mmgp Feb 22 '13 at 18:22

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