SPEAKER RECOGNITION: EVALUATION FOR GMM-UBM AND 3D CONVOLUTIONAL NEURAL NETWORKS SYSTEMS
The Speaker Recognition (SR) systems are more accurate than ever in verifying and identifying the human voice which is one of the most convenient biometric characteristics of the human identity. Research and development on speaker recognition techniques have been varied widely in the last decade with an aim to lessen relevant challenges effects such as background noise, poor channel conditions, crosstalk, etc. In this paper, we evaluate two speaker verification (SV) systems, and each one uses an entirely different method to verify speakers: 1) ALIZE 3.0 which is an opensource platform for SR ...
(For more, see "View full record.")