Domain Adaptation For Formant Estimation Using Deep Learning
2016 Β· Yehoshua Dissen, Joseph Keshet, Jacob Goldberger, et al.
Abstract
In this paper we present a domain adaptation technique for formant estimation using a deep network. We first train a deep learning network on a small read speech dataset. We then freeze the parameters of the trained network and use several different datasets to train an adaptation layer that makes the obtained network universal in the sense that it works well for a variety of speakers and speech domains with very different characteristics. We evaluated our adapted network on three datasets, each of which has different speaker characteristics and speech styles. The performance of our method compares favorably with alternative methods for formant estimation.
Authors
(none)
Tags
Stats
Related papers
- Unsupervised Adaptation With Domain Separation Networks For Robust Speech Recognition (2017)9.92
- Bayesian Learning For Deep Neural Network Adaptation (2020)9.76
- Domain Adaptation Using Class Similarity For Robust Speech Recognition (2020)6.77
- Unsupervised Domain Adaptation By Adversarial Learning For Robust Speech Recognition (2018)0.00
- Empirical Evaluation Of Speaker Adaptation On DNN Based Acoustic Model (2018)5.24
- Automatic Data Augmentation For Domain Adapted Fine-tuning Of Self-supervised Speech Representations (2023)0.00
- Generalized Domain Adaptation Framework For Parametric Back-end In Speaker Recognition (2023)0.00
- Vae-based Domain Adaptation For Speaker Verification (2019)7.50