English

USM-SCD: Multilingual Speaker Change Detection Based on Large Pretrained Foundation Models

Audio and Speech Processing 2024-01-09 v3 Machine Learning Sound

Abstract

We introduce a multilingual speaker change detection model (USM-SCD) that can simultaneously detect speaker turns and perform ASR for 96 languages. This model is adapted from a speech foundation model trained on a large quantity of supervised and unsupervised data, demonstrating the utility of fine-tuning from a large generic foundation model for a downstream task. We analyze the performance of this multilingual speaker change detection model through a series of ablation studies. We show that the USM-SCD model can achieve more than 75% average speaker change detection F1 score across a test set that consists of data from 96 languages. On American English, the USM-SCD model can achieve an 85.8% speaker change detection F1 score across various public and internal test sets, beating the previous monolingual baseline model by 21% relative. We also show that we only need to fine-tune one-quarter of the trainable model parameters to achieve the best model performance. The USM-SCD model exhibits state-of-the-art ASR quality compared with a strong public ASR baseline, making it suitable to handle both tasks with negligible additional computational cost.

Keywords

Cite

@article{arxiv.2309.08023,
  title  = {USM-SCD: Multilingual Speaker Change Detection Based on Large Pretrained Foundation Models},
  author = {Guanlong Zhao and Yongqiang Wang and Jason Pelecanos and Yu Zhang and Hank Liao and Yiling Huang and Han Lu and Quan Wang},
  journal= {arXiv preprint arXiv:2309.08023},
  year   = {2024}
}

Comments

5 pages, 2 figures, 4 tables

R2 v1 2026-06-28T12:22:05.611Z