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I have written an algorithm to process a camera capture and extract a binary image of two features I'm interested in. I'm trying to find the best (fastest) way of detecting when the two features intersect and where the lowest (y coordinate is greatest) point is (this will be the intersection).

I do not want to use a findContours() based method as this is too slow and, in my opinion, unnecessary. I also think blob detection libraries are too bloated for this.

I have two sample images (sorry for low quality):

(not touching: http://i.imgur.com/7bQ9qMo.jpg) (touching: http://i.imgur.com/tuSmKw7.jpg)

Due to the way these images are created, there is often noise in the top right corner which looks like pixelated lines but methods such as dilation and erosion lose resolution around the features I'm trying to find.

My initial thought would be to use direct pixel access to form a width filter and a height filter. The lowest point in the image is therefore the intersection.

I have no idea how to detect when they touch... logically I can see that a triangle is formed when they intersect and otherwise there is no enclosed black area. Can I fill the image starting from the corner with say, red, and then calculate how much of the image is still black?

Does anyone have any suggestions?


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You can always scale down the image to improve processing speed. This may mean scaling down before the original image is converted into binary image. –  rwong Mar 1 '14 at 5:00
"I also think blob detection libraries are too bloated for this." Why do you say that? Any halfway decent blob (connected components) algorithm should run fast enough to detect blobs in a 640 x 480 image at 30 frames/second or better. If not, it may be parameterized incorrectly. –  Rethunk Mar 1 '14 at 6:51
Because I'm running on a low power processor. On a desktop, sure, it's fast enough. –  user2290362 Mar 1 '14 at 11:24

1 Answer 1

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Your suggestion is a way more slow than finding contours. For binary images, finding contour is very easy and quick because you just need to find a black pixel followed by a white pixel or vice versa.

Anyway, if you don't want to use it, you can use the vertical projection or vertical profile you will see it the objects intersect or not.

For example, in the following image check the the letter "n" which is little similar to non-intersecting object, and the letter "o" which is similar to intersecting objects : enter image description here

By analyzing the histograms you can recognize which one is intersecting or not.

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Hi, thanks. Finding contours was faster than expected which really helps find the position of the finger. It does not help find the overlap though. The vertical profiling is interesting but I can't work out how to write a detector for it in code? –  user2290362 Mar 1 '14 at 11:22
You can extract two kinds of vertical profile : by scanning from the bottom or from the up. In the picture, the vertical profile is extracted from the bottom. Is is easy to do : for each column of the image you scan all white pixels until you reach a black one. The number of white pixels scanned is the height of the histogram bin. –  Olivier A Mar 3 '14 at 9:00

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