A Hierarchical Subspace Model for Language-Attuned Acoustic Unit Discovery

11/04/2020
by   Bolaji Yusuf, et al.
0

In this work, we propose a hierarchical subspace model for acoustic unit discovery. In this approach, we frame the task as one of learning embeddings on a low-dimensional phonetic subspace, and simultaneously specify the subspace itself as an embedding on a hyper-subspace. We train the hyper-subspace on a set of transcribed languages and transfer it to the target language. In the target language, we infer both the language and unit embeddings in an unsupervised manner, and in so doing, we simultaneously learn a subspace of units specific to that language and the units that dwell on it. We conduct our experiments on TIMIT and two low-resource languages: Mboshi and Yoruba. Results show that our model outperforms major acoustic unit discovery techniques, both in terms of clustering quality and segmentation accuracy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/08/2019

Bayesian Subspace Hidden Markov Model for Acoustic Unit Discovery

This work tackles the problem of learning a set of language specific aco...
research
02/16/2018

Bayesian Models for Unit Discovery on a Very Low Resource Language

Developing speech technologies for low-resource languages has become a v...
research
05/19/2020

Bayesian Subspace HMM for the Zerospeech 2020 Challenge

In this paper we describe our submission to the Zerospeech 2020 challeng...
research
07/29/2020

Exploiting Cross-Lingual Knowledge in Unsupervised Acoustic Modeling for Low-Resource Languages

(Short version of Abstract) This thesis describes an investigation on un...
research
02/05/2017

An Empirical Evaluation of Zero Resource Acoustic Unit Discovery

Acoustic unit discovery (AUD) is a process of automatically identifying ...
research
09/25/2017

Deep Sparse Subspace Clustering

In this paper, we present a deep extension of Sparse Subspace Clustering...
research
12/14/2022

Unsupervised Detection of Contextualized Embedding Bias with Application to Ideology

We propose a fully unsupervised method to detect bias in contextualized ...

Please sign up or login with your details

Forgot password? Click here to reset