Kernelized Rényi distance for speaker recognition
Title | Kernelized Rényi distance for speaker recognition |
Publication Type | Conference Papers |
Year of Publication | 2010 |
Authors | Vasan Srinivasan B, Duraiswami R, Zotkin DN |
Conference Name | Acoustics Speech and Signal Processing (ICASSP), 2010 IEEE International Conference on |
Date Published | 2010/03// |
Keywords | #x0301;nyi, approach;input, distance;reference, entropy;graphical, equipment;entropy;speaker, graphic, identification;speaker, processor;information, Re, recognition;, recognition;speaker, signals;kernelized, signals;speaker, theoretic, verification;computer |
Abstract | Speaker recognition systems classify a test signal as a speaker or an imposter by evaluating a matching score between input and reference signals. We propose a new information theoretic approach for computation of the matching score using the Re #x0301;nyi entropy. The proposed entropic distance, the Kernelized Re #x0301;nyi distance (KRD), is formulated in a non-parametric way and the resulting measure is efficiently evaluated in a parallelized fashion on a graphical processor. The distance is then adapted as a scoring function and its performance compared with other popular scoring approaches in a speaker identification and speaker verification framework. |
DOI | 10.1109/ICASSP.2010.5495587 |