I have been (loosely) following the SIDEKIT tutorial on speaker identification using i-vectors (see Run an i-vector system for details). The tutorial mentions that:
The lists (for i-vectors) needed are: - the list of files to train the GMM-UBM - an IdMap listing the files to train the total variability matrix - an IdMap to train the PLDA, WCCN, Mahalanobis matrices - the IdMap listing the enrolment segments and models - the IdMap describing the test segments
Having completed the tutorial for GMM-UBM, I understand the use of a GMM-UBM list and IdMaps for enrolment and test segments, but what do the other two (total variability matrix and PLDA/WCCN/Mahalanobis training) do?
Moreover, what data would I use to define these IdMaps? I don't have access to the NIST datasets so, the data I'm using is 60 male and 60 female speakers with 9 utterances (5 used for enrollment, 4 for testing) all retrieved from the VoxForge corpus.
As I understand it, the Total Variability matrix is the i-vectors equivalent of a UBM and is used to form distinguishing vectors of each speaker.
The only thing I know about PLDA, WCCN and Mahalanobis is that are all scoring/differentiation methods that assist in identifying/verifying speakers from one another.