ASLGSDApr 7, 2022

MTI-Net: A Multi-Target Speech Intelligibility Prediction Model

arXiv:2204.03310v218 citationsh-index: 46
AI Analysis

This work addresses the problem of robust speech assessment for applications in hearing aids or speech processing systems, but it is incremental as it builds on existing deep learning methods.

The study tackled the challenge of predicting speech intelligibility in unseen environments by proposing MTI-Net, a multi-task model that simultaneously predicts human subjective listening scores and word error rates, achieving high correlation with ground-truth scores.

Recently, deep learning (DL)-based non-intrusive speech assessment models have attracted great attention. Many studies report that these DL-based models yield satisfactory assessment performance and good flexibility, but their performance in unseen environments remains a challenge. Furthermore, compared to quality scores, fewer studies elaborate deep learning models to estimate intelligibility scores. This study proposes a multi-task speech intelligibility prediction model, called MTI-Net, for simultaneously predicting human and machine intelligibility measures. Specifically, given a speech utterance, MTI-Net is designed to predict human subjective listening test results and word error rate (WER) scores. We also investigate several methods that can improve the prediction performance of MTI-Net. First, we compare different features (including low-level features and embeddings from self-supervised learning (SSL) models) and prediction targets of MTI-Net. Second, we explore the effect of transfer learning and multi-tasking learning on training MTI-Net. Finally, we examine the potential advantages of fine-tuning SSL embeddings. Experimental results demonstrate the effectiveness of using cross-domain features, multi-task learning, and fine-tuning SSL embeddings. Furthermore, it is confirmed that the intelligibility and WER scores predicted by MTI-Net are highly correlated with the ground-truth scores.

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