Channel coding considerations for wireless LANs
Daniel J. Costello Jr., Pierre R. Chevillat, et al.
ISIT 1997
In this letter, we propose a discriminative modeling approach for the speaker verification problem that uses polynomial kernel support vector machines (PK-SVMs). The proposed approach is rooted in an equivalence relationship between the state-of-the-art probabilistic linear discriminant analysis (PLDA) and second degree polynomial kernel methods. We present two techniques for overcoming the memory and computational challenges that PK-SVMs pose. The first of these, a kernel evaluation simplification trick, eliminates the need to explicitly compute dot products for a huge number of training samples. The second technique makes use of the massively parallel processing power of modern graphical processing units. We performed experiments on the Phase I speaker verification track of the DARPA sponsored Robust Automatic Transcription of Speech (RATS) program. We found that, in the multi-session enrollment experiments, second degree PK-SVMs outperformed PLDA across all tasks in terms of the official evaluation metric, and third and fourth degree PK-SVMs provided a performance improvement over the second degree PK-SVMs. Furthermore, for the "30s-30s" task, a linear score combination between the PLDA and PK-SVM based systems provided 27% improvement relative to the PLDA baseline in terms of the official evaluation metric. © 1994-2012 IEEE.
Daniel J. Costello Jr., Pierre R. Chevillat, et al.
ISIT 1997
J. LaRue, C. Ting
Proceedings of SPIE 1989
Timothy J. Wiltshire, Joseph P. Kirk, et al.
SPIE Advanced Lithography 1998
Charles A Micchelli
Journal of Approximation Theory