You can still use a similar approach.
Unlike Fezvez's approach which combines feature detection (which points in the image are interesting) and feature description (what is unique about that point), your own code already provides a detection part (where the circle centers are).
Now you need to generate a set of putative matches (guesses at which set corresponds to which set). You can do this using a feature descriptor at every circle location (possibly with a big window). See this vl_sift section on custom frames for an example of extracting descriptors at a particular location. Note, you may need to renormalize image to account for local affine warping. Use distance ratio test for SIFT or potentially some other distance metric for other systems.
Once you have the matches, you can feed it into a robust homography solver like OpenCV's findHomography to reject outliers (invalid matches which inevitably arise due to noise/other issues).
Alternatively, you can establish the point correspondences for the corners of the rectangles etc. by hand and feed that into the homography solver.
Perspective projections of all planar surfaces (like your calibration target) can be related via a homography. Anything you want to do in terms of marker identity can be backed out from the transform.