I have implemented AdaBoost sequence algorithm and currently I am trying to implement so called Cascaded AdaBoost, basing on P. Viola and M. Jones original paper. Unfortunately I have some doubts, connected with adjusting the threshold for one stage. As we can read in original paper, the procedure is described in literally one sentence:
Decrease threshold for the ith classiﬁer until the current cascaded classiﬁer has a detection rate of at least d × Di − 1 (this also affects Fi)
I am not sure mainly two things:
- What is the threshold? Is it 0.5 * sum (alpha) expression value or only 0.5 factor?
- What should be the initial value of the threshold? (0.5?)
- What does "decrease threshold" mean in details? Do I need to iterative select new threshold e.g. 0.5, 0.4, 0.3? What is the step of decreasing?
I have tried to search this info in Google, but unfortunately I could not find any useful information.
Thank you for your help.