English

Supervised online diarization with sample mean loss for multi-domain data

Audio and Speech Processing 2019-11-14 v3 Machine Learning Sound

Abstract

Recently, a fully supervised speaker diarization approach was proposed (UIS-RNN) which models speakers using multiple instances of a parameter-sharing recurrent neural network. In this paper we propose qualitative modifications to the model that significantly improve the learning efficiency and the overall diarization performance. In particular, we introduce a novel loss function, we called Sample Mean Loss and we present a better modelling of the speaker turn behaviour, by devising an analytical expression to compute the probability of a new speaker joining the conversation. In addition, we demonstrate that our model can be trained on fixed-length speech segments, removing the need for speaker change information in inference. Using x-vectors as input features, we evaluate our proposed approach on the multi-domain dataset employed in the DIHARD II challenge: our online method improves with respect to the original UIS-RNN and achieves similar performance to an offline agglomerative clustering baseline using PLDA scoring.

Keywords

Cite

@article{arxiv.1911.01266,
  title  = {Supervised online diarization with sample mean loss for multi-domain data},
  author = {Enrico Fini and Alessio Brutti},
  journal= {arXiv preprint arXiv:1911.01266},
  year   = {2019}
}
R2 v1 2026-06-23T12:04:09.182Z