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I have an image of a pool table with slight perspective distortion:

Pool Table Image

I am trying to un-warp the image (such that the corners of the pool table correspond to the corners of my output image) and then detect the pool balls on the output image. To unwarp the table, I intend to use cv2.PerspectiveTransform() to obtain the transformation matrix that maps the corners of the pool table to the corners of my output image. However, I do not have the locations of the corners of my table; I want to find the corners programmatically.

So far, I have applied a mask (that filters out everything but the pool table). After applying the mask, I've applied a Canny edge detector to find the edges of the pool table only:

Edge of Pool Table

My idea was to use the Hough line transform algorithm to find the lines corresponding to the edges of the pool table (to find the corners of the pool table programmatically), but the Hough line transform algorithm seems to have a hard time detecting the edges well. How can I find the corners of the pool table from here?

EDIT

Is there any way I can just extract the sharp corners of the outline (the eight points corresponding to where the straight edges turn into the pockets)?

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    You can try to find contours (like cv2.findContours(imgThreshCopy, cv2.RETR_LIST, cv2.CHAIN_APPROX_SIMPLE)) in yout masked image and then using cv2.approxPolyDP you can conlrol edges of you contour. So then you will get the corners of the table May 4 at 19:53
  • I've just tried such an approach. Unfortunately, the cv2.approxPolyDP method does not extrapolate corners well, so the corners are on the sharp corners of the pool pockets (as opposed to empty space, where the true corners are). May 6 at 16:17
  • Have you tried Harris corner detection?
    – Jeru Luke
    May 7 at 10:44
  • Or you could find the minimum bounding rectangle enclosing the mask image. The corners of the rectangle could well approximate the corners of the pool table
    – Jeru Luke
    May 7 at 10:47
  • @JeruLuke Tried Shi-Tomasi corner detection, but it's identifying some of edges of the balls as corners. It's also not consistently identifying the twelve corners of the pool pockets. I've tried using a minimum bounding rectangle but the corners of the minimum bounding rectangle doesn't really approximate the corners of the actual pool table well (I need the corners to be pretty darn accurate). May 8 at 23:39

1 Answer 1

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The corners can only be obtained by extrapolating the straight sides.

You can start by wrapping the outline in a minimum-area rectangle to get a rough approximation. From this approximation, you can extract sections of the outline that are fairly straight (using a predefined mask), and perform line fitting on them.

enter image description here

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  • Thanks for the prompt response! How did you isolate the yellow edges from the table? May 4 at 22:18
  • @StackOverflow: try and understand the "mask" concept. May 5 at 6:27
  • Sorry for the inconvenience. I'm still kind of confused as to what you mean by a "predefined mask". May 5 at 14:31
  • @StackOverflow: it's in blue on the picture. May 5 at 14:35
  • I've managed to wrap the masked image with a minimum-area rectangle (the outer blue frame). I'm still unsure as to how I can use this minimum area rectangle to obtain the yellow edges. May 6 at 15:43

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