Source -free Domain Adaptation For Speaker Verification In Data-scarce Languages And Noisy Channels
2024 Β· Shlomo Salo Elia, Aviad Malachi, Vered Aharonson, et al.
Abstract
Domain adaptation is often hampered by exceedingly small target datasets and inaccessible source data. These conditions are prevalent in speech verification, where privacy policies and/or languages with scarce speech resources limit the availability of sufficient data. This paper explored techniques of sourcefree domain adaptation unto a limited target speech dataset for speaker verificationin data-scarce languages. Both language and channel mis-match between source and target were investigated. Fine-tuning methods were evaluated and compared across different sizes of labeled target data. A novel iterative cluster-learn algorithm was studied for unlabeled target datasets.
Authors
(none)
Tags
Stats
Related papers
- Speaker Verification Using End-to-end Adversarial Language Adaptation (2018)11.19
- Self-supervised Learning Based Domain Adaptation For Robust Speaker Verification (2021)11.49
- Multi-domain Adaptation By Self-supervised Learning For Speaker Verification (2023)0.00
- Cross-lingual Text-independent Speaker Verification Using Unsupervised Adversarial Discriminative Domain Adaptation (2019)11.85
- Unsupervised Domain Adaptation For Robust Speech Recognition Via Variational Autoencoder-based Data Augmentation (2017)14.23
- Channel Adaptation For Speaker Verification Using Optimal Transport With Pseudo Label (2024)0.00
- Domain Adaptation Based Speaker Recognition On Short Utterances (2016)0.00
- Vae-based Domain Adaptation For Speaker Verification (2019)7.50