CLSDASMay 24, 2021

Unsupervised Speech Recognition

arXiv:2105.11084v3298 citations
Originality Highly original
AI Analysis

This enables speech recognition for many languages without labeled data, addressing a major limitation in global language technology.

The paper tackles the problem of speech recognition requiring labeled training data by introducing wav2vec-U, an unsupervised method that reduces the phoneme error rate on TIMIT from 26.1 to 11.3 and achieves a word error rate of 5.9 on Librispeech test-other, rivaling supervised systems.

Despite rapid progress in the recent past, current speech recognition systems still require labeled training data which limits this technology to a small fraction of the languages spoken around the globe. This paper describes wav2vec-U, short for wav2vec Unsupervised, a method to train speech recognition models without any labeled data. We leverage self-supervised speech representations to segment unlabeled audio and learn a mapping from these representations to phonemes via adversarial training. The right representations are key to the success of our method. Compared to the best previous unsupervised work, wav2vec-U reduces the phoneme error rate on the TIMIT benchmark from 26.1 to 11.3. On the larger English Librispeech benchmark, wav2vec-U achieves a word error rate of 5.9 on test-other, rivaling some of the best published systems trained on 960 hours of labeled data from only two years ago. We also experiment on nine other languages, including low-resource languages such as Kyrgyz, Swahili and Tatar.

Code Implementations4 repos
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes