English

Xi-Vector Embedding for Speaker Recognition

Audio and Speech Processing 2021-08-13 v1 Sound

Abstract

We present a Bayesian formulation for deep speaker embedding, wherein the xi-vector is the Bayesian counterpart of the x-vector, taking into account the uncertainty estimate. On the technology front, we offer a simple and straightforward extension to the now widely used x-vector. It consists of an auxiliary neural net predicting the frame-wise uncertainty of the input sequence. We show that the proposed extension leads to substantial improvement across all operating points, with a significant reduction in error rates and detection cost. On the theoretical front, our proposal integrates the Bayesian formulation of linear Gaussian model to speaker-embedding neural networks via the pooling layer. In one sense, our proposal integrates the Bayesian formulation of the i-vector to that of the x-vector. Hence, we refer to the embedding as the xi-vector, which is pronounced as /zai/ vector. Experimental results on the SITW evaluation set show a consistent improvement of over 17.5% in equal-error-rate and 10.9% in minimum detection cost.

Keywords

Cite

@article{arxiv.2108.05679,
  title  = {Xi-Vector Embedding for Speaker Recognition},
  author = {Kong Aik Lee and Qiongqiong Wang and Takafumi Koshinaka},
  journal= {arXiv preprint arXiv:2108.05679},
  year   = {2021}
}
R2 v1 2026-06-24T05:03:41.797Z