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After some processing, I have this binary image:

enter image description here

I want to remove the unclosed curves i.e. the top left and the bottom right curves. Can you suggest me the algorithm for doing this? Thanks.

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StackOverflow is not the proper place for this question. We do not write your code for you. You need to do your own coding and if you aren't sure why something is not working as expected, post the code with an explanation of what you were expecting it to do, and what it is actually doing including all error messages. See about StackOverflow. –  Lightness Races in Orbit Feb 18 '13 at 13:57
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@LightnessRacesinOrbit I'm not asking for code, I'm asking for an algorithm and let me write the code. Although I will be happier if someone suggests an algorithm with some code. –  bsdnoobz Feb 18 '13 at 14:30
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SO would be a better place if closing questions were restricted to those that have a not-so-low score (something like 50, maybe) in the tags used in the question. Of course this question is badly tagged, but that is a different problem. Closing it as not constructive is completely incorrect, at best it could be closed as a duplicate that I suspect to be the case (although I didn't search for that). –  mmgp Feb 18 '13 at 16:43
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3 Answers 3

up vote 5 down vote accepted

As @John Zwinck mentions this can be done using floodfill, but I figure your problem is you want to return to the original black background, and retain the contours of the closed shapes. While you could use contours to figure this out, here is a fairly simple approach that will remove all non-closed and unenclosed line segments from an image, even if they are attached to a closed shape, But retain the edges of the closed curves.

  1. floodfill image with white - this removes your problem non-closed lines, but also the borders of your wanted objects.
  2. erode the image, then invert it
  3. AND the image with the original image - thus restoring the borders.

Output:

enter image description here

The code is in python, but should easily translate to the usual C++ cv2 usage.

import cv2
import numpy as np

im = cv2.imread('I7qZP.png',cv2.CV_LOAD_IMAGE_GRAYSCALE)
im2 = im.copy()
mask = np.zeros((np.array(im.shape)+2), np.uint8)
cv2.floodFill(im, mask, (0,0), (255))
im = cv2.erode(im, np.ones((3,3)))
im = cv2.bitwise_not(im)
im = cv2.bitwise_and(im,im2)
cv2.imshow('show', im)
cv2.imwrite('fin.png',im)
cv2.waitKey()
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You're looking for Flood Fill: http://en.wikipedia.org/wiki/Flood_fill

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I understand that Flood Fill can be used to fills the two closed curves with a given color. But can you kindly show me (perhaps with some code) how to use it to remove the unclosed curves? –  bsdnoobz Feb 18 '13 at 13:38
    
Start from the outside border and flood from there. That will obliterate the unclosed curves and leave the closed ones. –  John Zwinck Feb 18 '13 at 14:11
    
The steps are provided by fraxel's answer. But thanks for your answer. –  bsdnoobz Feb 18 '13 at 15:08
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I had a bit of a play with an idea, though it wouldn't be the most efficient method by a long shot. I converted the image to an array of 300x300 chars, and it seemed to work well on that. I'm not familiar with opencv.

The idea was go through each pixel and see if it marks the end of a line - if so make that pixel black. Repeat until there are no changes to the picture.

The criteria I used to identify a pixel as the end of a line was to note the number of black-white changes around the loop of that pixel. If there are less than 4 changes it is the end of a line. This won't work if the lines are thicker than 1 px. I could probably come up with something better. It seemed to work with the provided picture.

do {
   res = 0;
   for (i = 1; i < 299; i++) {
      for (j = 1; j < 299; j++) {
         if (image[i][j] != 0) {
            count = 0;

            if (image[i-1][j-1] != image[i-1][j+0]) count++;
            if (image[i-1][j+0] != image[i-1][j+1]) count++;
            if (image[i-1][j+1] != image[i+0][j+1]) count++;
            if (image[i+0][j+1] != image[i+1][j+1]) count++;
            if (image[i+1][j+1] != image[i+1][j+0]) count++;
            if (image[i+1][j+0] != image[i+1][j-1]) count++;
            if (image[i+1][j-1] != image[i+0][j-1]) count++;
            if (image[i+0][j-1] != image[i-1][j-1]) count++;

            if (count < 4) {
               image[i][j] = 0;
               res = 1;
            }
         }
      }
   }
} while (res);
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