English

Multi-Channel Speaker Verification for Single and Multi-talker Speech

Audio and Speech Processing 2021-04-12 v2

Abstract

To improve speaker verification in real scenarios with interference speakers, noise, and reverberation, we propose to bring together advancements made in multi-channel speech features. Specifically, we combine spectral, spatial, and directional features, which includes inter-channel phase difference, multi-channel sinc convolutions, directional power ratio features, and angle features. To maximally leverage supervised learning, our framework is also equipped with multi-channel speech enhancement and voice activity detection. On all simulated, replayed, and real recordings, we observe large and consistent improvements at various degradation levels. On real recordings of multi-talker speech, we achieve a 36% relative reduction in equal error rate w.r.t. single-channel baseline. We find the improvements from speaker-dependent directional features more consistent in multi-talker conditions than clean. Lastly, we investigate if the learned multi-channel speaker embedding space can be made more discriminative through a contrastive loss-based fine-tuning. With a simple choice of Triplet loss, we observe a further 8.3% relative reduction in EER.

Keywords

Cite

@article{arxiv.2010.12692,
  title  = {Multi-Channel Speaker Verification for Single and Multi-talker Speech},
  author = {Saurabh Kataria and Shi-Xiong Zhang and Dong Yu},
  journal= {arXiv preprint arXiv:2010.12692},
  year   = {2021}
}
R2 v1 2026-06-23T19:36:25.679Z