Unsupervised Noise Adaptive Speech Enhancement by Discriminator-Constrained Optimal Transport
Abstract
This paper presents a novel discriminator-constrained optimal transport network (DOTN) that performs unsupervised domain adaptation for speech enhancement (SE), which is an essential regression task in speech processing. The DOTN aims to estimate clean references of noisy speech in a target domain, by exploiting the knowledge available from the source domain. The domain shift between training and testing data has been reported to be an obstacle to learning problems in diverse fields. Although rich literature exists on unsupervised domain adaptation for classification, the methods proposed, especially in regressions, remain scarce and often depend on additional information regarding the input data. The proposed DOTN approach tactically fuses the optimal transport (OT) theory from mathematical analysis with generative adversarial frameworks, to help evaluate continuous labels in the target domain. The experimental results on two SE tasks demonstrate that by extending the classical OT formulation, our proposed DOTN outperforms previous adversarial domain adaptation frameworks in a purely unsupervised manner.
Cite
Text
Lin et al. "Unsupervised Noise Adaptive Speech Enhancement by Discriminator-Constrained Optimal Transport." Neural Information Processing Systems, 2021.Markdown
[Lin et al. "Unsupervised Noise Adaptive Speech Enhancement by Discriminator-Constrained Optimal Transport." Neural Information Processing Systems, 2021.](https://mlanthology.org/neurips/2021/lin2021neurips-unsupervised/)BibTeX
@inproceedings{lin2021neurips-unsupervised,
title = {{Unsupervised Noise Adaptive Speech Enhancement by Discriminator-Constrained Optimal Transport}},
author = {Lin, Hsin-Yi and Tseng, Huan-Hsin and Lu, Xugang and Tsao, Yu},
booktitle = {Neural Information Processing Systems},
year = {2021},
url = {https://mlanthology.org/neurips/2021/lin2021neurips-unsupervised/}
}