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I have a application for tracking, then I will have the player object as the following photo shows. I need to do the following:

1- detect features from each frames and match them with the next frame, I use SURF

2- calculate the average point from the feature points which I have estimated from step 1

3- calculate distance between the average point that estimated at step 2, between each two frames.

then I am able to save the location for the matched features,

surfPoints.Location

but still I don't know what is the best way to get center of mass for these points, or take average for them?

Also how to filter the miss matched points, I see that there is a function estimateGeometricTransform , but this function remove many points from the matched ones ! is there any good approach for that?

enter image description here

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  • Not completely on topic, but having only 3+ points out of Harris is a bit weird ? Have you tried lowering the threshold --for keypoint selection -- a bit ?
    – Jiby
    Jun 5, 2015 at 21:38

2 Answers 2

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So let me sum up :

You have two keypoint arrays, and matching function that gives you indices of matches in both lists ("keypoint 7 in original list is ~ matching keypoint 12 in the second")

So now your question is to evaluate global shift from these local displacements, taking into account outliers ?

In that case (fitting a model given outliers) you should really look into RANSAC song (and the eternally funny RANSAC song)

Although the algorithm works great, it is non-deterministic (as it will involve trying out models based on random samples and evaluating the number of outliers)


I'll let you do the reading on RANSAC's theory (simple statistics), now let's see how to use RANSAC in your case :

Your problem is thus : given a list of 2D vectors, find the best 2D vector that minimizes the number of "outliers"

The model fitting step is then just picking a vector out of the list of vector

Outliers are vectors that go "CRAZY WRONG" in direction or norm

Also, RANSAC explained by Mathworks

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The difficulty here is that you have non-rigid motion. estimateGeometricTransform is great when the motion can be described by an affine or a projective transformation. However, because you are tracking a complex articulated object, like a person, the motion is much more complicated. This is why estimateGeometericTransform rejects a lot of matches as outliers.

There are several things you can try. One is to try using vision.PointTracker to track the points. It uses the KLT (Kanade-Lucas-Tomasi) algorithm.

Alternatively, if your camera is stationary, you can try using vision.ForegroundDetector, which implements background subtraction. It will give you a binary mask showing all moving objects.

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