Is there a way to extract the features corresponding to the weak learners from the adaboost algorithm implemented in Opencv ?
I know that adaboost combines a set of weak learners based on a set of input features. The same features are measured for each sample in the training set. Usually adaboost uses a decision stump and sets a threshold for each feature and chooses the decision stump having the minimum error. I want to find out what are the features that generated the weak learners.