Chronological Self-Training for Real-Time Speaker Diarization
Sound
2022-08-09 v1 Computation and Language
Machine Learning
Audio and Speech Processing
Abstract
Diarization partitions an audio stream into segments based on the voices of the speakers. Real-time diarization systems that include an enrollment step should limit enrollment training samples to reduce user interaction time. Although training on a small number of samples yields poor performance, we show that the accuracy can be improved dramatically using a chronological self-training approach. We studied the tradeoff between training time and classification performance and found that 1 second is sufficient to reach over 95% accuracy. We evaluated on 700 audio conversation files of about 10 minutes each from 6 different languages and demonstrated average diarization error rates as low as 10%.
Cite
@article{arxiv.2208.03393,
title = {Chronological Self-Training for Real-Time Speaker Diarization},
author = {Dirk Padfield and Daniel J. Liebling},
journal= {arXiv preprint arXiv:2208.03393},
year = {2022}
}
Comments
5 pages, 5 figures, ICASSP 2021