Self-Supervised Learning Based Domain Adaptation for Robust Speaker Verification
Zhengyang Chen,
Shuai Wang,
Yanmin Qian
Abstract:Large performance degradation is often observed for speaker verification systems when applied to a new domain dataset. Given an unlabeled target-domain dataset, unsupervised domain adaptation (UDA) methods, which usually leverage adversarial training strategies, are commonly used to bridge the performance gap caused by the domain mismatch. However, such adversarial training strategy only uses the distribution information of target domain data and can not ensure the performance improvement on the target domain.… Show more
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