Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Improving Mispronunciation Detection with Wav2vec2-based Momentum Pseudo-Labeling for Accentedness and Intelligibility Assessment

About

Current leading mispronunciation detection and diagnosis (MDD) systems achieve promising performance via end-to-end phoneme recognition. One challenge of such end-to-end solutions is the scarcity of human-annotated phonemes on natural L2 speech. In this work, we leverage unlabeled L2 speech via a pseudo-labeling (PL) procedure and extend the fine-tuning approach based on pre-trained self-supervised learning (SSL) models. Specifically, we use Wav2vec 2.0 as our SSL model, and fine-tune it using original labeled L2 speech samples plus the created pseudo-labeled L2 speech samples. Our pseudo labels are dynamic and are produced by an ensemble of the online model on-the-fly, which ensures that our model is robust to pseudo label noise. We show that fine-tuning with pseudo labels achieves a 5.35% phoneme error rate reduction and 2.48% MDD F1 score improvement over a labeled-samples-only fine-tuning baseline. The proposed PL method is also shown to outperform conventional offline PL methods. Compared to the state-of-the-art MDD systems, our MDD solution produces a more accurate and consistent phonetic error diagnosis. In addition, we conduct an open test on a separate UTD-4Accents dataset, where our system recognition outputs show a strong correlation with human perception, based on accentedness and intelligibility.

Mu Yang, Kevin Hirschi, Stephen D. Looney, Okim Kang, John H. L. Hansen• 2022

Related benchmarks

TaskDatasetResultRank
Mispronunciation DetectionL2-ARCTIC (test)
F1 Score55.42
20
Phoneme RecognitionL2-ARCTIC (test)
Phoneme Error Rate (PER)14.36
14
Mispronunciation DiagnosisL2-ARCTIC (test)
EDR22.71
14
Showing 3 of 3 rows

Other info

Follow for update