I've created multiple haar cascaded classifiers of face. I used a different number of positives and negatives each time.
1st classifier: 5000 positive and 3000 negatives
2nd classifier: 3000 positive and 3000 negatives (deleted 2000 redundant/similar images)
the efficiency of both these classifiers was almost same...
Isn't there a method by which I can delete all redundant images in my database prior to training?
What are the ideal lighting and background conditions for training Classifier?
How many images in database are considered ideal for best performance or does it depend on the type of data in the set?