Truly unsupervised acoustic word embeddings using weak top-down constraints in encoder-decoder models
Abstract
We investigate unsupervised models that can map a variable-duration speech segment to a fixed-dimensional representation. In settings where unlabelled speech is the only available resource, such acoustic word embeddings can form the basis for "zero-resource" speech search, discovery and indexing systems. Most existing unsupervised embedding methods still use some supervision, such as word or phoneme boundaries. Here we propose the encoder-decoder correspondence autoencoder (EncDec-CAE), which, instead of true word segments, uses automatically discovered segments: an unsupervised term discovery system finds pairs of words of the same unknown type, and the EncDec-CAE is trained to reconstruct one word given the other as input. We compare it to a standard encoder-decoder autoencoder (AE), a variational AE with a prior over its latent embedding, and downsampling. EncDec-CAE outperforms its closest competitor by 24% relative in average precision on two languages in a word discrimination task.
Cite
@article{arxiv.1811.00403,
title = {Truly unsupervised acoustic word embeddings using weak top-down constraints in encoder-decoder models},
author = {Herman Kamper},
journal= {arXiv preprint arXiv:1811.00403},
year = {2019}
}
Comments
5 pages, 3 figures, 2 tables; accepted to ICASSP 2019