ASSDNov 23, 2021

Effect of noise suppression losses on speech distortion and ASR performance

arXiv:2111.11606v131 citations
Originality Synthesis-oriented
AI Analysis

This work addresses speech quality and ASR degradation issues in compact models for real-time on-the-edge applications, but it is incremental.

The paper investigated how different noise suppression losses affect speech distortion and ASR performance, finding that pre-trained networks did not significantly improve over a strong spectral loss.

Deep learning based speech enhancement has made rapid development towards improving quality, while models are becoming more compact and usable for real-time on-the-edge inference. However, the speech quality scales directly with the model size, and small models are often still unable to achieve sufficient quality. Furthermore, the introduced speech distortion and artifacts greatly harm speech quality and intelligibility, and often significantly degrade automatic speech recognition (ASR) rates. In this work, we shed light on the success of the spectral complex compressed mean squared error (MSE) loss, and how its magnitude and phase-aware terms are related to the speech distortion vs. noise reduction trade off. We further investigate integrating pre-trained reference-less predictors for mean opinion score (MOS) and word error rate (WER), and pre-trained embeddings on ASR and sound event detection. Our analyses reveal that none of the pre-trained networks added significant performance over the strong spectral loss.

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