I'm working on my first computer vision project where I take a picture of a chart and detect the symbols on it. There are 5 distinct shapes that need to be detected.

This is the result of my edge detection algorithm: http://i.imgur.com/mh9Ol.jpg. The 5 symbols are a single dot, 4 dots grouped together, a rectangle, and 2 oddly shaped symbols.

At this point I'm not sure which algorithms I should look at that will allow me to pick out these shapes and discern them from each other. Any ideas would be very helpful. Thanks!

2 Answers 2


It seems like Shape Context would be a natural choice for this type of problem.

  • Unfortunately it's not implemented in OpenCV.
    – krzych
    Jun 25, 2012 at 18:41

some years ago I tried template matching with OpenCV, which is described here.

It worked pretty well, and I think this is what you are looking for; however I remember that it was pretty slow, so maybe it won't be a good fit if you are programming a real time application. If this is the case, you may have to play around with the geometry of your shapes, and try to find them with Hough transforms for lines and circles, which are both implemented in OpenCV.

Have fun !

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