Diffusion-based Speech Enhancement with Schr\"odinger Bridge and Symmetric Noise Schedule
Diffusion-based Speech Enhancement with Schr\"odinger Bridge and Symmetric Noise Schedule
Recently, diffusion-based generative models have demonstrated remarkable performance in speech enhancement tasks. However, these methods still encounter challenges, including the lack of structural information and poor performance in low Signal-to-Noise Ratio (SNR) scenarios. To overcome these challenges, we propose the Schr\"oodinger Bridge-based Speech Enhancement (SBSE) method, which learns the diffusion processes directly between the noisy input and the clean distribution, unlike conventional diffusion-based speech enhancement systems that learn data to Gaussian distributions. To enhance performance in extremely noisy conditions, we introduce a two-stage system incorporating ratio mask information into the diffusion-based generative model. Our experimental results show that our proposed SBSE method outperforms all the baseline models and achieves state-of-the-art performance, especially in low SNR conditions. Importantly, only a few inference steps are required to achieve the best result.
Siyi Liu、Mathieu Salzmann、Milos Cernak、Paul Kendrick、Andrew Harper、Siyi Wang
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Siyi Liu,Mathieu Salzmann,Milos Cernak,Paul Kendrick,Andrew Harper,Siyi Wang.Diffusion-based Speech Enhancement with Schr\"odinger Bridge and Symmetric Noise Schedule[EB/OL].(2024-09-08)[2025-08-02].https://arxiv.org/abs/2409.05116.点此复制
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