I would like to train a SVM with opencv c++ so as to infer the position of a point in the image with respect to two other points to which the wanted point is related.
Basically I have the trajectories of the three points during a whole video and I would like to use these trajectories as training data of the SVM.
I'm new to machine learning techniques and after some readings I think I've understood that SVM will return a boolean result( true if some conditions are satisfied at the same time, false if not). In my case I need a position in the image as result.
I'm not sure how I should organize the training set, I was thinking to do something like that:
T1 T2 T3 label=1
where T1 T2 and T3 contain all the points belonging to the three trajectories that I know as correct;
T1 T2 T4 label=-1
where T1 and T2 are the same as before while T4 contains random points that don't lie on the trajectory T3.
Once I have trained the SVM with different trajectories from different videos I would like to pass three points: P1(x,y) and P2(x,y) corresponding to T1 and T2 at time t and a random point P(x,y), and the SVM should predict if the random point is in the wanted position or not.
anybody could explain me if this approach is wrong and why?