Matthew A Grayson
Journal of Complexity
This letter describes speaker verification using a covariance-modeling approach for speaker and world modeling. Two verification methods are suggested: frame level scoring and utterance level scoring. Both methods exhibit extremely low computational and model-storage requirements. The suggested methods are tested on the male segment of the 1999 NIST Speaker Recognition Evaluation corpus, using a single training session, and compared to a Gaussian mixture model (GMM) system. The degradation in accuracy and the computational requirements are estimated. Covariance modeling is seen to be a viable alternative to GMM whenever computational and storage requirements must to be traded with verification accuracy.
Matthew A Grayson
Journal of Complexity
Minghong Fang, Zifan Zhang, et al.
CCS 2024
Robert Manson Sawko, Malgorzata Zimon
SIAM/ASA JUQ
Chai Wah Wu
Linear Algebra and Its Applications