14thAnnual Conference of the International Speech Communication Association

Lyon, France
August 25-29, 2013

Fast and Memory Effective I-Vector Extraction Using a Factorized Sub-Space

Sandro Cumani, Pietro Laface

Politecnico di Torino, Italy

Most of the state-of-the-art speaker recognition systems use a compact representation of spoken utterances referred to as i-vectors. Since the "standard" i-vector extraction procedure requires large memory structures and is relatively slow, new approaches have recently been proposed that are able to obtain either accurate solutions at the expense of an increase of the computational load, or fast approximate solutions, which are traded for lower memory costs. We propose a new approach particularly useful for applications that need to minimize their memory requirements. Our solution not only dramatically reduces the storage needs for i-vector extraction, but is also fast. Tested on the female part of the tel-tel extended NIST 2010 evaluation trials, our approach substantially improves the performance with respect to the fastest but inaccurate eigen-decomposition approach, using much less memory than any other known method.

Full Paper

Bibliographic reference.  Cumani, Sandro / Laface, Pietro (2013): "Fast and memory effective i-vector extraction using a factorized sub-space", In INTERSPEECH-2013, 1599-1603.