ParaGSE: Parallel Generative Speech Enhancement with Group-Vector-Quantization-based Neural Speech Codec

Abstract

Recently, generative speech enhancement has garnered considerable interest; however, existing approaches are hindered by excessive complexity, limited efficiency, and suboptimal speech quality. To overcome these challenges, this paper proposes a novel parallel generative speech enhancement (ParaGSE) framework that leverages a group vector quantization (GVQ)-based neural speech codec. The GVQ-based codec adopts separate VQs to produce mutually independent tokens, enabling efficient parallel token prediction in ParaGSE. Specifically, ParaGSE leverages the GVQ-based codec to encode degraded speech into distinct tokens, predicts the corresponding clean tokens through parallel branches conditioned on degraded spectral features, and ultimately reconstructs clean speech via the codec decoder. Experimental results demonstrate that ParaGSE consistently produces superior enhanced speech compared to both discriminative and generative baselines, under a wide range of distortions including noise, reverberation, band-limiting, and their mixtures. Furthermore, empowered by parallel computation in token prediction, ParaGSE attains about a 1.5-fold improvement in generation efficiency on CPU compared with serial generative speech enhancement approaches.


I. Denoising


Sample 1


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

Sample 2


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

Sample 3


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

II. Dereverberation


Sample 1


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

Sample 2


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

Sample 3


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

III. Mixed Distortion Suppression


Sample 1


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

Sample 2


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE

Sample 3


Noisy Speech Clean Speech DEMUCS CMGAN MP-SENet Genhancer ParaGSE