Kernel partial least squares for speaker recognition
Title | Kernel partial least squares for speaker recognition |
Publication Type | Conference Papers |
Year of Publication | 2011 |
Authors | Srinivasan BV, Garcia-Romero D, Zotkin DN, Duraiswami R |
Conference Name | Twelfth Annual Conference of the International Speech Communication Association |
Date Published | 2011/// |
Abstract | I-vectors are a concise representation of speaker characteristics. Recent advances in speaker recognition have utilized their ability to capture speaker and channel variability to develop efficient recognition engines. Inter-speaker relationships in the i-vector space are non-linear. Accomplishing effective speaker recognition requires a good modeling of these non-linearities and can be cast as a machine learning problem. In this paper, we propose a kernel partial least squares (kernel PLS, or KPLS) framework for modeling speakers in the i-vectors space. The resulting recognition system is tested across several conditions of the NIST SRE 2010 extended core data set and compared against state-of-the-art systems: Joint Factor Analysis (JFA), Probabilistic Linear Discriminant Analysis (PLDA), and Cosine Distance Scoring (CDS) classifiers. Improvements are shown. |