English

Multi-class Spectral Clustering with Overlaps for Speaker Diarization

Audio and Speech Processing 2020-11-06 v1 Sound

Abstract

This paper describes a method for overlap-aware speaker diarization. Given an overlap detector and a speaker embedding extractor, our method performs spectral clustering of segments informed by the output of the overlap detector. This is achieved by transforming the discrete clustering problem into a convex optimization problem which is solved by eigen-decomposition. Thereafter, we discretize the solution by alternatively using singular value decomposition and a modified version of non-maximal suppression which is constrained by the output of the overlap detector. Furthermore, we detail an HMM-DNN based overlap detector which performs frame-level classification and enforces duration constraints through HMM state transitions. Our method achieves a test diarization error rate (DER) of 24.0% on the mixed-headset setting of the AMI meeting corpus, which is a relative improvement of 15.2% over a strong agglomerative hierarchical clustering baseline, and compares favorably with other overlap-aware diarization methods. Further analysis on the LibriCSS data demonstrates the effectiveness of the proposed method in high overlap conditions.

Keywords

Cite

@article{arxiv.2011.02900,
  title  = {Multi-class Spectral Clustering with Overlaps for Speaker Diarization},
  author = {Desh Raj and Zili Huang and Sanjeev Khudanpur},
  journal= {arXiv preprint arXiv:2011.02900},
  year   = {2020}
}

Comments

Accepted at IEEE SLT 2021

R2 v1 2026-06-23T19:56:27.305Z