Efficient Speech Enhancement via Embeddings from Pre-trained Generative Audioencoders
About
Recent research has delved into speech enhancement (SE) approaches that leverage audio embeddings from pre-trained models, diverging from time-frequency masking or signal prediction techniques. This paper introduces an efficient and extensible SE method. Our approach involves initially extracting audio embeddings from noisy speech using a pre-trained audioencoder, which are then denoised by a compact encoder network. Subsequently, a vocoder synthesizes the clean speech from denoised embeddings. An ablation study substantiates the parameter efficiency of the denoise encoder with a pre-trained audioencoder and vocoder. Experimental results on both speech enhancement and speaker fidelity demonstrate that our generative audioencoder-based SE system outperforms models utilizing discriminative audioencoders. Furthermore, subjective listening tests validate that our proposed system surpasses an existing state-of-the-art SE model in terms of perceptual quality.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Speech Enhancement | Valentini | PESQ2.32 | 6 | |
| Speech Enhancement | DNS 1 | PESQ2.24 | 6 |