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image-processingdetecthomographyransaccorner-detection

RANSAC Algorithm


Can anybody please show me how to use RANSAC algorithm to select common feature points in two images which have a certain portion of overlap? The problem came out from feature based image stitching.
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Solution

  • I implemented a image stitcher a couple of years back. The article on RANSAC on Wikipedia describes the general algortihm well.

    When using RANSAC for feature based image matching, what you want is to find the transform that best transforms the first image to the second image. This would be the model described in the wikipedia article.

    If you have already got your features for both images and have found which features in the first image best matches which features in the second image, RANSAC would be used something like this.

    The input to the algorithm is:
    n - the number of random points to pick every iteration in order to create the transform. I chose n = 3 in my implementation.
    k - the number of iterations to run
    t - the threshold for the square distance for a point to be considered as a match
    d - the number of points that need to be matched for the transform to be valid
    image1_points and image2_points - two arrays of the same size with points. Assumes that image1_points[x] is best mapped to image2_points[x] accodring to the computed features.
    
    best_model = null
    best_error = Inf
    for i = 0:k
      rand_indices = n random integers from 0:num_points
      base_points = image1_points[rand_indices]
      input_points = image2_points[rand_indices] 
      maybe_model = find best transform from input_points -> base_points
    
      consensus_set = 0
      total_error = 0
      for i = 0:num_points
        error = square distance of the difference between image2_points[i] transformed by maybe_model and image1_points[i]
        if error < t
          consensus_set += 1
          total_error += error
    
      if consensus_set > d && total_error < best_error
        best_model = maybe_model
        best_error = total_error
    

    The end result is the transform that best tranforms the points in image2 to image1, which is exacly what you want when stitching.